M.Tech/Ph.D Thesis Help in Chandigarh | Thesis Guidance in Chandigarh

thesis title on digital image processing

[email protected]

thesis title on digital image processing

+91-9465330425

What is Digital Image Processing?

Digital image processing is the process of using computer algorithms to perform image processing on digital images. Latest topics in digital image processing for research and thesis are based on these algorithms. Being a subcategory of digital signal processing, digital image processing is better and carries many advantages over analog image processing. It permits to apply multiple algorithms to the input data and does not cause the problems such as the build-up of noise and signal distortion while processing. As images are defined over two or more dimensions that make digital image processing “a model of multidimensional systems”. The history of digital image processing dates back to early 1920s when the first application of digital image processing came into news. Many students are going for this field for their  m tech thesis  as well as for Ph.D. thesis. There are various thesis topics in digital image processing for M.Tech, M.Phil and Ph.D. students. The list of thesis topics in image processing is listed here. Before going into  topics in image processing , you should have some basic knowledge of image processing.

image-processing

Latest research topics in image processing for research scholars:

  • The hybrid classification scheme for plant disease detection in image processing
  • The edge detection scheme in image processing using ant and bee colony optimization
  • To improve PNLM filtering scheme to denoise MRI images
  • The classification method for the brain tumor detection
  • The CNN approach for the lung cancer detection in image processing
  • The neural network method for the diabetic retinopathy detection
  • The copy-move forgery detection approach using textual feature extraction method
  • Design face spoof detection method based on eigen feature extraction and classification
  • The classification and segmentation method for the number plate detection
  • Find the link at the end to download the latest thesis and research topics in Digital Image Processing

Formation of Digital Images

Firstly, the image is captured by a camera using sunlight as the source of energy. For the acquisition of the image, a sensor array is used. These sensors sense the amount of light reflected by the object when light falls on that object. A continuous voltage signal is generated when the data is being sensed. The data collected is converted into a digital format to create digital images. For this process, sampling and quantization methods are applied. This will create a 2-dimensional array of numbers which will be a digital image.

Why is Image Processing Required?

  • Image Processing serves the following main purpose:
  • Visualization of the hidden objects in the image.
  • Enhancement of the image through sharpening and restoration.
  • Seek valuable information from the images.
  • Measuring different patterns of objects in the image.
  • Distinguishing different objects in the image.

Applications of Digital Image Processing

  • There are various applications of digital image processing which can also be a good topic for the thesis in image processing. Following are the main applications of image processing:
  • Image Processing is used to enhance the image quality through techniques like image sharpening and restoration. The images can be altered to achieve the desired results.
  • Digital Image Processing finds its application in the medical field for gamma-ray imaging, PET Scan, X-ray imaging, UV imaging.
  • It is used for transmission and encoding.
  • It is used in color processing in which processing of colored images is done using different color spaces.
  • Image Processing finds its application in machine learning for pattern recognition.

List of topics in image processing for thesis and research

  • There are various in digital image processing for thesis and research. Here is the list of latest thesis and research topics in digital image processing:
  • Image Acquisition
  • Image Enhancement
  • Image Restoration
  • Color Image Processing
  • Wavelets and Multi Resolution Processing
  • Compression
  • Morphological Processing
  • Segmentation
  • Representation and Description
  • Object recognition
  • Knowledge Base

1. Image Acquisition:

Image Acquisition is the first and important step of the digital image of processing . Its style is very simple just like being given an image which is already in digital form and it involves preprocessing such as scaling etc. It starts with the capturing of an image by the sensor (such as a monochrome or color TV camera) and digitized. In case, the output of the camera or sensor is not in digital form then an analog-to-digital converter (ADC) digitizes it. If the image is not properly acquired, then you will not be able to achieve tasks that you want to. Customized hardware is used for advanced image acquisition techniques and methods. 3D image acquisition is one such advanced method image acquisition method. Students can go for this method for their master’s thesis and research.

2. Image Enhancement:

Image enhancement is one of the easiest and the most important areas of digital image processing. The core idea behind image enhancement is to find out information that is obscured or to highlight specific features according to the requirements of an image. Such as changing brightness & contrast etc. Basically, it involves manipulation of an image to get the desired image than original for specific applications. Many algorithms have been designed for the purpose of image enhancement in image processing to change an image’s contrast, brightness, and various other such things. Image Enhancement aims to change the human perception of the images. Image Enhancement techniques are of two types: Spatial domain and Frequency domain.

3. Image Restoration:

Image restoration involves improving the appearance of an image. In comparison to image enhancement which is subjective, image restoration is completely objective which makes the sense that restoration techniques are based on probabilistic or mathematical models of image degradation. Image restoration removes any form of a blur, noise from images to produce a clean and original image. It can be a good choice for the M.Tech thesis on image processing. The image information lost during blurring is restored through a reversal process. This process is different from the image enhancement method. Deconvolution technique is used and is performed in the frequency domain. The main defects that degrade an image are restored here.

4. Color Image Processing:

Color image processing has been proved to be of great interest because of the significant increase in the use of digital images on the Internet. It includes color modeling and processing in a digital domain etc. There are various color models which are used to specify a color using a 3D coordinate system. These models are RGB Model, CMY Model, HSI Model, YIQ Model. The color image processing is done as humans can perceive thousands of colors. There are two areas of color image processing full-color processing and pseudo color processing. In full-color processing, the image is processed in full colors while in pseudo color processing the grayscale images are converted to colored images. It is an interesting topic in image processing.

thesis title on digital image processing

Items in ScholarWorks are protected by copyright, with all rights reserved, unless otherwise indicated.

  • BE Projects
  • B Tech Projects
  • ME Projects
  • M Tech Projects
  • mca projects
  • Mini Projects for CSE
  • Mini Projects for ECE
  • Mini Projects for IT
  • IEEE Projects for CSE
  • IEEE Projects for ECE
  • Digital Image Processing Projects
  • Medical Image Processing Projects
  • Matlab Thesis
  • Fuzzy Logic Matlab
  • Matlab Projects
  • Matlab Simulation Projects
  • Matlab based Communication Projects
  • Medical Imaging Projects
  • Biomedical Engineering Projects
  • Image Processing Thesis
  • Scilab Projects
  • OpenCV Projects
  • Steganography Projects
  • Cryptography Projects
  • Cyber Security Projects
  • Network Security Projects
  • Information Security Projects
  • Wireless body area network projects
  • Wireless Communication Projects
  • Wireless Sensor Networks Projects
  • Wireless Network Projects
  • Router Projects
  • CAN Protocol Projects
  • NS2 Projects
  • NS3 Projects
  • Opnet Projects
  • Omnet Projects
  • Qualnet Projects
  • VANET Projects
  • Manet Projects
  • LTE Projects
  • Ad hoc projects
  • Software Defined networking projects
  • Peersim Projects
  • P2P Live Streaming Projects
  • Video Streaming Projects
  • Green Radio Projects
  • Distributed Computing Projects
  • PPI Projects
  • Cognitive Radio Projects
  • IoT Projects
  • m2m projects
  • Hadoop Projects
  • MapReduce Projects
  • Core Java Projects
  • Forensics Projects
  • Cloudsim Projects
  • Cloud Analyst Projects
  • Weka Projects
  • Pattern Recognition Projects
  • Gridsim Projects
  • Augmented Reality Projects
  • Android Projects
  • Rtool Projects
  • Software Engineering Projects
  • ARM Projects
  • Signal Processing Projects
  • GPS Projects
  • GSM Projects
  • RFID Projects
  • Embedded System Projects
  • LabVIEW Projects
  • Microcontroller Projects
  • Robotics Projects
  • VHDL Projects
  • FPGA Projects
  • Zigbee Projects
  • Simulink Projects
  • Power Electronics Projects
  • Renewable Energy Projects for Engineering Students
  • Writing Phd Thesis
  • Cognitive Radio Thesis
  • Vanet Thesis
  • Manet Thesis
  • Mobile Application Thesis
  • Neural Network Thesis
  • Security system Thesis
  • Steganography Thesis
  • Software Defined Networking Thesis
  • Wireless Network Sensor Thesis
  • Computer Science Thesis
  • M Tech Thesis
  • Phd Projects
  • Dissertation Writing Service

              Digital image processing thesis topics are actively chosen these days, considering the scope of the topic in the near future. Here is a detailed understanding of doing projects in digital image processing . Digital image processing is the process by which digital images are modified according to the user’s wish.  Initially, images are an array of two-dimensional points arranged into columns and rows. First, let us start with its working. It can be made into the following.

  • Black and white image
  • 8-bit image
  • 16-bit color format

HOW DOES DIGITAL IMAGE PROCESSING WORK?

It is one of the most fundamental questions that have to be answered before dwelling deep into the topic. Digital image processing projects are the favourite area of research for our expert team. They are currently guiding several projects on advanced image processing in the digital world. They suggest the following steps as the basic functionality of digital image processing.

  • Acquiring inputs in the form of both video and image
  • Analysis of the input
  • Extraction of useful information from it through manipulation 
  • Processing of output
  • Reporting of the final output

In this way, the digital image processing method works. Your project can have an objective to improve upon these steps by implementing current developments like AI and Internet of Things projects into it. Do you feel it would be easy for you if someone already experienced in the field of digital

Image processing methods research helps you in your project? If so, then you have found the right place to get assistance from. We provide the best online research guidance for projects related to digital image processing . We have the most favoured online research experts who can help you do the best projects on the topic. Please continue reading to know more about our digital image processing projects.

WHAT ARE THE OPERATIONS IN DIGITAL IMAGE PROCESSING?

As you might know, there are various processes involved in the techniques of digital image processing. We are currently developing projects on all these steps. Our projects mostly spiral around these topics with the aim of improving their efficiency. The following are the  different steps involved in the functioning of digital image processing .

  • Image retrieval (extracting useful images from the input)
  • Detecting objects (object recognition)
  • Extraction of content (essential content is extracted)
  • Image preprocessing (denoising, restoring, enhancing contrast, etc.)
  • Detection of the object (object recognition)

These steps are very significant for the processing of digital images. Algorithms are developed so as to achieve more efficiency in each of these steps.  These algorithms can be evaluated based on the performance and the quality of output obtained . Our technical team is building various methods to enhance image quality. 

We provide you support for digital image processing thesis topics too. Our developers and writers are well qualified and are highly experienced in producing standard theses and summaries. So you can rely on them for any support regarding your dip thesis . Now let us look into some of the performance metrics used for evaluating the algorithms used in digital image processing .

HOW IS IMAGE QUALITY MEASURED?

The quality image is a direct outcome of the algorithm used for processing digital images. The evaluation of such algorithms is based on the following factors.

  • ROC and AUC curve
  • Recall 
  • Sensitivity
  • Precision 
  • Specificity
  • Accuracy 

All our projects have shown great results with respect to these metrics. You can get in touch with us to know more about the projects that we delivered. We will provide you the details of the performance of our projects when they were implemented in real-time dip projects using python . 

Along with these metrics, some pre-and post-processing metrics should look upon to design your project on digital image processing . Let us see about those metrics in the following.

PERFORMANCE ANALYSIS IN DIGITAL IMAGE PROCESSING

PREPROCESSING METRICS

The following are the preprocessing metrics used in evaluating digital image processing methods.

  • Root mean squared error or RMSE
  • Structural Similarity Index or SSIM
  • Patch-based contrast quality index or PCQI
  • Blink or reference less image spatial quality evaluator or BRISQUE
  • Mean Squared Error or MSE
  • Peak Signal to Noise Ratio or PSNR
  • In contrast to noise ratio or CNR
  • Colour image Quality Measure or CIQM

Your project should focus on showing good results with respect to these metrics. Our engineers can guide you in such a way to achieve greater results in performance metrics. Get in touch with us and have a talk with our experts on choosing your digital image processing thesis topics . We will now provide you details of post-processing metrics.

POSTPROCESSING METRICS

The following post-processing metrics have to be remembered in the case of digital image processing techniques

  • Kappa quadratic weight
  • Kappa coefficient 
  • Mean absolute error
  • Accuracy(total)
  • Kappa linear weight
  • Root mean square error
  • Rate of error
  • Confusion matrix

When your research project excels in these measurements, your project will be appreciated. We are ready to stand by your side to make your project a huge success. Now let us see about some important research ideas in digital image processing.

RESEARCH IDEAS IN DIGITAL IMAGE PROCESSING  THESIS TOPICS

The following are the most important areas of research in digital image processing based on the current trends. 

  • Detecting number plate (segmentation and classification)
  • Detecting lung cancer (CNN approach)
  • Autonomous navigation
  • Advanced and recent methods for processing images
  • Compression of video and image(for reducing size) 
  • Scene understanding
  • Detecting copy-move forgery (by extracting textual feature)
  • Detection of diabetic retinopathy by neural network method
  • Multiple object detection
  • Face spoof detection (method of extracting eigen feature)

We have reviewed and monitored projects with these metrics. World-class experts with us are highly experienced in writing your thesis so as to show better results in these metrics. As algorithms for this performance efficiency basis , let us see more about the different types of algorithms that are popular in digital image processing.

IMPORTANT ALGORITHMS FOR DIGITAL IMAGE PROCESSING

The following are the standard algorithms for digital image processing

  • Conditional GANs
  • Deep convolutional GANs 

Currently, very few experts in handling these algorithms around the world  are well experienced in dealing with these algorithms. They are updating them every now and then to make themselves undeniable choices for research support in digital image processing. Now let us see in more detail about digital image processing projects using MATLAB in image analysis.

WHAT IS IMAGE ANALYSIS IN MATLAB? 

MATLAB plays a key role in Analysing images on the following grounds.

  • Detection of edges
  • Counting (objects)
  • Shape finding
  • Noise removal
  • Calculation of statistics (analysis of texture and quality of the image)

You might have been more familiar with using MATLAB.  Our engineers have been phenomenal in handling MATLAB techniques for many ideal case applications.  So you can know more about the practical difficulties that they faced and the ways in which they overcame these issues and made their projects more ideal than others. 

IMAGE PROCESSING TECHNIQUES FOR IMAGE ANALYSIS

Extraction of useful information from an image is called image analysis. The following are the categories of image analysis.

  • Region analysis (extraction of statistical information)
  • Segmentation of image (for distinguishing objects and regions)
  • Removing noise (with deep learning and morphological filtering)
  • Enhancement of image (displaying and analyzing images)

MATLAB functions are quite popular for usage in analyzing medical images . Let us see about the functions of MATLAB used for image analysis in the following section.

MATLAB FUNCTIONS FOR IMAGE ANALYSIS

The following MATLAB functions are used for image analysis.

  • bwselect3 (selection of objects)
  • imgradientxyz (finding 3D image direction and magnitude of gradient)
  • imhist (image histogram data)
  • edge3 (3D intensity volume – finding edges)
  • imgradientxyz (finding direction gradients of 3D images)
  • regionprops3 (measurement of volume of regions in 3D volumetric images)

Now let us see more about MATLAB functions for the segmentation of images.

MATLAB FUNCTIONS FOR IMAGE SEGMENTATION

There are some critical MATLAB functions used for image segmentation. They are listed below.

  • Bfscore (outlines image segmentation score)
  • Gradientweight (calculation of weights)
  • Imsegfmm (segmentation of binary image)
  • Jaccard (finding Jaccard similarity coefficient)
  • Active contour (segmentation of images on fore and background)
  • Dice (for Sorensen-dice similarity coefficient)
  • Graydiffweight (image pixel weight calculation)
  • imsegkmeans3 (volume segmentation based on k-means clustering)
  • superpixels3 (oversegmentation of 3D superpixel)

Our experts can give you complete support and guidance in any digital image processing thesis topic . You can reach out to us regarding any type of research support, and we here provide you details of all basics about digital image processing. Advanced ideas are also readily available with us. We will stay with you in your entire research journey.

  • LATEST DIGITAL IMAGE PROCESSING THESIS TOPICS

digital image processing Recently Published Documents

Total documents.

  • Latest Documents
  • Most Cited Documents
  • Contributed Authors
  • Related Sources
  • Related Keywords

Developing Digital Photomicroscopy

(1) The need for efficient ways of recording and presenting multicolour immunohistochemistry images in a pioneering laboratory developing new techniques motivated a move away from photography to electronic and ultimately digital photomicroscopy. (2) Initially broadcast quality analogue cameras were used in the absence of practical digital cameras. This allowed the development of digital image processing, storage and presentation. (3) As early adopters of digital cameras, their advantages and limitations were recognised in implementation. (4) The adoption of immunofluorescence for multiprobe detection prompted further developments, particularly a critical approach to probe colocalization. (5) Subsequently, whole-slide scanning was implemented, greatly enhancing histology for diagnosis, research and teaching.

Parallel Algorithm of Digital Image Processing Based on GPU

Quantitative identification cracks of heritage rock based on digital image technology.

Abstract Digital image processing technologies are used to extract and evaluate the cracks of heritage rock in this paper. Firstly, the image needs to go through a series of image preprocessing operations such as graying, enhancement, filtering and binaryzation to filter out a large part of the noise. Then, in order to achieve the requirements of accurately extracting the crack area, the image is again divided into the crack area and morphological filtering. After evaluation, the obtained fracture area can provide data support for the restoration and protection of heritage rock. In this paper, the cracks of heritage rock are extracted in three different locations.The results show that the three groups of rock fractures have different effects on the rocks, but they all need to be repaired to maintain the appearance of the heritage rock.

Determination of Optical Rotation Based on Liquid Crystal Polymer Vortex Retarder and Digital Image Processing

Discussion on curriculum reform of digital image processing under the certification of engineering education, influence and application of digital image processing technology on oil painting creation in the era of big data, geometric correction analysis of highly distortion of near equatorial satellite images using remote sensing and digital image processing techniques, color enhancement of low illumination garden landscape images.

The unfavorable shooting environment severely hinders the acquisition of actual landscape information in garden landscape design. Low quality, low illumination garden landscape images (GLIs) can be enhanced through advanced digital image processing. However, the current color enhancement models have poor applicability. When the environment changes, these models are easy to lose image details, and perform with a low robustness. Therefore, this paper tries to enhance the color of low illumination GLIs. Specifically, the color restoration of GLIs was realized based on modified dynamic threshold. After color correction, the low illumination GLI were restored and enhanced by a self-designed convolutional neural network (CNN). In this way, the authors achieved ideal effects of color restoration and clarity enhancement, while solving the difficulty of manual feature design in landscape design renderings. Finally, experiments were carried out to verify the feasibility and effectiveness of the proposed image color enhancement approach.

Discovery of EDA-Complex Photocatalyzed Reactions Using Multidimensional Image Processing: Iminophosphorane Synthesis as a Case Study

Abstract Herein, we report a multidimensional screening strategy for the discovery of EDA-complex photocatalyzed reactions using only photographic devices (webcam, cellphone) and TLC analysis. An algorithm was designed to identify automatically EDA-complex reactive mixtures in solution from digital image processing in a 96-wells microplate and by TLC-analysis. The code highlights the region of absorption of the mixture in the visible spectrum, and the quantity of the color change through grayscale values. Furthermore, the code identifies automatically the blurs on the TLC plate and classifies the mixture as colorimetric reactions, non-reactive or potentially reactive EDA mixtures. This strategy allowed us to discover and then optimize a new EDA-mediated approach for obtaining iminophosphoranes in up to 90% yield.

Mangosteen Quality Grading for Export Markets Using Digital Image Processing Techniques

Export citation format, share document.

Monash University

Top 10 Digital Image Processing Project Topics

We guide research scholars in choosing novel digital image processing project topics. What is meant by digital image processing? Digital Image Processing is a method of handling images to get different insights into the digital image. It has a set of technologies to analyze the image in multiple aspects for better human / machine image interpretation . To be clearer, it is used to improve the actual quality of the image or to abstract the essential features from the entire picture is achieved through digital image processing projects.

This page is about the new upcoming Digital Image Processing Project Topics for scholars who wish to create a masterpiece in their research career!!!

Generally, the digital image is represented in the form of pixels which are arranged in array format. The dimension of the rectangular array gives the size of the image (MxN), where M denotes the column and N denotes the row. Further, x and y coordinates are used to signify the single-pixel position of an image. At the same time, the x value increases from left to right, and the y value increases from top to bottom in the coordinate representation of the image. When you get into the DIP research field, you need to know the following key terminologies.

Top 10 Digital Image Processing Project Topics Guidance

Important Digital Image Processing Terminologies  

  • Stereo Vision and Super Resolution
  • Multi-Spectral Remote Sensing and Imaging
  • Digital Photography and Imaging
  • Acoustic Imaging and Holographic Imaging
  • Computer Vision and Graphics
  • Image Manipulation and Retrieval
  • Quality Enrichment in Volumetric Imaging
  • Color Imaging and Bio-Medical Imaging
  • Pattern Recognition and Analysis
  • Imaging Software Tools, Technologies and Languages
  • Image Acquisition and Compression Techniques
  • Mathematical Morphological Image Segmentation

Image Processing Algorithms

In general, image processing techniques/methods are used to perform certain actions over the input images, and according to that, the desired information is extracted in it. For that, input is an image, and the result is an improved/expected image associated with their task. It is essential to find that the algorithms for image processing play a crucial role in current real-time applications. Various algorithms are used for various purposes as follows, 

  • Digital Image Detection
  • Image Reconstruction
  • Image Restoration
  • Image Enhancement
  • Image Quality Estimation
  • Spectral Image Estimation
  • Image Data Compression

For the above image processing tasks, algorithms are customized for the number of training and testing samples and also can be used for real-time/online processing. Till now, filtering techniques are used for image processing and enhancement, and their main functions are as follows, 

  • Brightness Correction
  • Contrast Enhancement
  • Resolution and Noise Level of Image
  • Contouring and Image Sharpening
  • Blurring, Edge Detection and Embossing

Some of the commonly used techniques for image processing can be classified into the following, 

  • Medium Level Image Processing Techniques – Binarization and Compression
  • Higher Level Image Processing Techniques – Image Segmentation
  • Low-Level Image Processing Techniques – Noise Elimination and Color Contrast Enhancement
  • Recognition and Detection Image Processing Algorithms – Semantic Analysis

Next, let’s see about some of the traditional image processing algorithms for your information. Our research team will guide in handpicking apt solutions for research problems . If there is a need, we are also ready to design own hybrid algorithms and techniques for sorting out complicated model . 

Types of Digital Image Processing Algorithms

  • Hough Transform Algorithm
  • Canny Edge Detector Algorithm
  • Scale-Invariant Feature Transform (SIFT) Algorithm
  • Generalized Hough Transform Algorithm
  • Speeded Up Robust Features (SURF) Algorithm
  • Marr–Hildreth Algorithm
  • Connected-component labeling algorithm: Identify and classify the disconnected areas
  • Histogram equalization algorithm: Enhance the contrast of image by utilizing the histogram
  • Adaptive histogram equalization algorithm: Perform slight alteration in contrast for the  equalization of the histogram
  • Error Diffusion Algorithm
  • Ordered Dithering Algorithm
  • Floyd–Steinberg Dithering Algorithm
  • Riemersma Dithering Algorithm
  • Richardson–Lucy deconvolution algorithm : It is also known as a deblurring algorithm, which removes the misrepresentation of the image to recover the original image
  • Seam carving algorithm : Differentiate the edge based on the image background information and also known as content-aware image resizing algorithm
  • Region Growing Algorithm
  • GrowCut Algorithm
  • Watershed Transformation Algorithm
  • Random Walker Algorithm
  • Elser difference-map algorithm: It is a search based algorithm primarily used for X-Ray diffraction microscopy to solve the general constraint satisfaction problems
  • Blind deconvolution algorithm : It is similar to Richardson–Lucy deconvolution to reconstruct the sharp point of blur image. In other words, it’s the process of deblurring the image.

Nowadays, various industries are also utilizing digital image processing by developing customizing procedures to satisfy their requirements. It may be achieved either from scratch or hybrid algorithmic functions . As a result, it is clear that image processing is revolutionary developed in many information technology sectors and applications.  

Research Digital Image Processing Project Topics

Digital Image Processing Techniques

  • In order to smooth the image, substitutes neighbor median / common value in the place of the actual pixel value. Whereas it is performed in the case of weak edge sharpness and blur image effect.
  • Eliminate the distortion in an image by scaling, wrapping, translation, and rotation process
  • Differentiate the in-depth image content to figure out the original hidden data or to convert the color image into a gray-scale image
  • Breaking up of image into multiple forms based on certain constraints. For instance: foreground, background
  • Enhance the image display through pixel-based threshold operation 
  • Reduce the noise in an image by the average of diverse quality multiple images 
  • Sharpening the image by improving the pixel value in the edge
  • Extract the specific feature for removal of noise in an image
  • Perform arithmetic operations (add, sub, divide and multiply) to identify the variation in between the images 

Beyond this, this field will give you numerous Digital Image Processing Project Topics for current and upcoming scholars . Below, we have mentioned some research ideas that help you to classify analysis, represent and display the images or particular characteristics of an image.

Latest 11 Interesting Digital Image Processing Project Topics

  • Acoustic and Color Image Processing
  • Digital Video and Signal Processing
  • Multi-spectral and Laser Polarimetric Imaging
  • Image Processing and Sensing Techniques
  • Super-resolution Imaging and Applications
  • Passive and Active Remote Sensing
  • Time-Frequency Signal Processing and Analysis
  • 3-D Surface Reconstruction using Remote Sensed Image
  • Digital Image based Steganalysis and Steganography
  • Radar Image Processing for Remote Sensing Applications
  • Adaptive Clustering Algorithms for Image processing

Moreover, if you want to know more about Digital Image Processing Project Topics for your research, then communicate with our team. We will give detailed information on current trends, future developments, and real-time challenges in the research grounds of Digital Image Processing.

Why Work With Us ?

Senior research member, research experience, journal member, book publisher, research ethics, business ethics, valid references, explanations, paper publication, 9 big reasons to select us.

Our Editor-in-Chief has Website Ownership who control and deliver all aspects of PhD Direction to scholars and students and also keep the look to fully manage all our clients.

Our world-class certified experts have 18+years of experience in Research & Development programs (Industrial Research) who absolutely immersed as many scholars as possible in developing strong PhD research projects.

We associated with 200+reputed SCI and SCOPUS indexed journals (SJR ranking) for getting research work to be published in standard journals (Your first-choice journal).

PhDdirection.com is world’s largest book publishing platform that predominantly work subject-wise categories for scholars/students to assist their books writing and takes out into the University Library.

Our researchers provide required research ethics such as Confidentiality & Privacy, Novelty (valuable research), Plagiarism-Free, and Timely Delivery. Our customers have freedom to examine their current specific research activities.

Our organization take into consideration of customer satisfaction, online, offline support and professional works deliver since these are the actual inspiring business factors.

Solid works delivering by young qualified global research team. "References" is the key to evaluating works easier because we carefully assess scholars findings.

Detailed Videos, Readme files, Screenshots are provided for all research projects. We provide Teamviewer support and other online channels for project explanation.

Worthy journal publication is our main thing like IEEE, ACM, Springer, IET, Elsevier, etc. We substantially reduces scholars burden in publication side. We carry scholars from initial submission to final acceptance.

Related Pages

Our benefits, throughout reference, confidential agreement, research no way resale, plagiarism-free, publication guarantee, customize support, fair revisions, business professionalism, domains & tools, we generally use, wireless communication (4g lte, and 5g), ad hoc networks (vanet, manet, etc.), wireless sensor networks, software defined networks, network security, internet of things (mqtt, coap), internet of vehicles, cloud computing, fog computing, edge computing, mobile computing, mobile cloud computing, ubiquitous computing, digital image processing, medical image processing, pattern analysis and machine intelligence, geoscience and remote sensing, big data analytics, data mining, power electronics, web of things, digital forensics, natural language processing, automation systems, artificial intelligence, mininet 2.1.0, matlab (r2018b/r2019a), matlab and simulink, apache hadoop, apache spark mlib, apache mahout, apache flink, apache storm, apache cassandra, pig and hive, rapid miner, support 24/7, call us @ any time, +91 9444829042, [email protected].

Questions ?

Click here to chat with us

Research on the Digital Image Processing Method Based on Parallel Computing

  • Conference paper
  • First Online: 24 August 2022
  • Cite this conference paper

thesis title on digital image processing

  • Zhen Kong 10  

Part of the book series: Mechanisms and Machine Science ((Mechan. Machine Science,volume 119))

Included in the following conference series:

  • International Conference on Computational & Experimental Engineering and Sciences

350 Accesses

In the continuous innovation of science and technology, most scientific problems need to deal with more data information, and the actual processing speed and quality directly determine the problem-solving process. Although the current single core processing technology got rapid development both at home and abroad, but still can't meet the demand of scientific problem, and the theory of parallel computing technology effectively solve the above problems, in the practical use of Chinese super cool platform can achieve the processing capacity of one hundred million times per second, and with the innovation of practical technology is still in constant breakthroughs. Therefore, based on the understanding of digital image processing methods and research trends, according to the concepts related to parallel computing and unified computing equipment architecture, this paper deeply discusses the core image processing technology methods and experimental results, thus proving the application value of parallel computing technology.

This is a preview of subscription content, log in via an institution to check access.

Access this chapter

  • Available as PDF
  • Read on any device
  • Instant download
  • Own it forever
  • Available as EPUB and PDF
  • Compact, lightweight edition
  • Dispatched in 3 to 5 business days
  • Free shipping worldwide - see info
  • Durable hardcover edition

Tax calculation will be finalised at checkout

Purchases are for personal use only

Institutional subscriptions

Similar content being viewed by others

thesis title on digital image processing

Parallel Algorithm of Digital Image Processing Based on GPU

thesis title on digital image processing

Review of Parallel Processing Methods for Big Image Data Applications

thesis title on digital image processing

Optimization Scheme Based on Parallel Computing Technology

Tang, J.: Research on parallel algorithm for image processing in multiprocessor. Autom. Expo. 24 (006), 105–108 (2007)

Google Scholar  

Zhao, R., Liang, S.: Analysis of embedded image processing method based on parallel computing. Modern Property Manage. 10 , 80–81 (2012)

Zhang, R., Li, L.: Application of PVM based network parallel computing in remote sensing image processing. Comput. Simul. 20 (010), 55–56, 135 (2003)

Xiong, J., Liu, C.: Research on parallel image processing algorithm based on message passing interface. J. Chengdu Univ. Nat. Sci. 29 (002), 137–139 (2010)

Zhan, Z., Li, G., Zhang, X., et al.: Research on parallel image preprocessing based on CUDA. Mach. Electron. 7 , 64–67 (2014)

Liu, Q., Wang, Z.: Research progress of rock numerical simulation based on digital image processing. Chinese J. Rock Mech. Eng. 39 (S02), 11

Wei, X.: Research on fast algorithm of image processing based on expectation and variance extension. Sci. Technol. Wind 434 (30), 63–64 (2020)

Zhang, C., Yang, J.: Research on image processing algorithm based on GPU. J. Southwest Normal Univ. (Nat. Sci) 07 , 41–45 (2013)

Nasridinov, A., Lee, Y., Park, Y.H.: Decision tree construction on GPU: ubiquitous parallel computing approach. Computing 96 (5), 403–413 (2014)

Article   Google Scholar  

Kobayashi, M., Toda, H., Kawai, Y., et al.: High-density three-dimensional mapping of internal strain by tracking microstructural features. Acta Materialia 56 (10), 2167–2181 (2008)

Download references

Author information

Authors and affiliations.

China Information Consulting & Designing Institute Co., Ltd., Nanjing, China

You can also search for this author in PubMed   Google Scholar

Corresponding author

Correspondence to Zhen Kong .

Editor information

Editors and affiliations.

School of Astronautics, Northwestern Polytechnical University, Xi'an, China

Honghua Dai

Rights and permissions

Reprints and permissions

Copyright information

© 2023 The Author(s), under exclusive license to Springer Nature Switzerland AG

About this paper

Cite this paper.

Kong, Z. (2023). Research on the Digital Image Processing Method Based on Parallel Computing. In: Dai, H. (eds) Computational and Experimental Simulations in Engineering. ICCES 2022. Mechanisms and Machine Science, vol 119. Springer, Cham. https://doi.org/10.1007/978-3-031-02097-1_30

Download citation

DOI : https://doi.org/10.1007/978-3-031-02097-1_30

Published : 24 August 2022

Publisher Name : Springer, Cham

Print ISBN : 978-3-031-02096-4

Online ISBN : 978-3-031-02097-1

eBook Packages : Engineering Engineering (R0)

Share this paper

Anyone you share the following link with will be able to read this content:

Sorry, a shareable link is not currently available for this article.

Provided by the Springer Nature SharedIt content-sharing initiative

  • Publish with us

Policies and ethics

  • Find a journal
  • Track your research

Open Access is an initiative that aims to make scientific research freely available to all. To date our community has made over 100 million downloads. It’s based on principles of collaboration, unobstructed discovery, and, most importantly, scientific progression. As PhD students, we found it difficult to access the research we needed, so we decided to create a new Open Access publisher that levels the playing field for scientists across the world. How? By making research easy to access, and puts the academic needs of the researchers before the business interests of publishers.

We are a community of more than 103,000 authors and editors from 3,291 institutions spanning 160 countries, including Nobel Prize winners and some of the world’s most-cited researchers. Publishing on IntechOpen allows authors to earn citations and find new collaborators, meaning more people see your work not only from your own field of study, but from other related fields too.

Brief introduction to this section that descibes Open Access especially from an IntechOpen perspective

Want to get in touch? Contact our London head office or media team here

Our team is growing all the time, so we’re always on the lookout for smart people who want to help us reshape the world of scientific publishing.

Home > Books > Digital Image Processing

Digital Image Processing Applications

Digital Image Processing Applications

Book metrics overview

2,022 Chapter Downloads

Impact of this book and its chapters

Total Chapter Downloads on intechopen.com

Book Citations

Total Chapter Citations

Academic Editor

Universidade Estadual de Santa Cruz , Brazil

Published 20 April 2022

Doi 10.5772/intechopen.95685

ISBN 978-1-83969-795-1

Print ISBN 978-1-83969-794-4

eBook (PDF) ISBN 978-1-83969-796-8

Copyright year 2022

Number of pages 126

Digital image processing can refer to a wide variety of techniques, concepts, and applications of different types of processing for different purposes. This book provides examples of digital image processing applications and presents recent research on processing concepts and techniques. Chapters cover such topics as image processing in medical physics, binarization, video processing, and more.

By submitting the form you agree to IntechOpen using your personal information in order to fulfil your library recommendation. In line with our privacy policy we won’t share your details with any third parties and will discard any personal information provided immediately after the recommended institution details are received. For further information on how we protect and process your personal information, please refer to our privacy policy .

Cite this book

There are two ways to cite this book:

Edited Volume and chapters are indexed in

Table of contents.

By Nupur Karmaker

By Saúl Manuel Domínguez Nicolás

By Edgardo Comas and Adrián Stácul

By Randa Khemiri, Soulef Bouaafia, Asma Bahba, Maha Nasr and Fatma Ezahra Sayadi

By Wei-Jong Yang, Cheng-Yu Lo, Pau-Choo Chung and Jar Ferr Yang

By Umamaheswari Kumarasamy, G.V. Shrichandran and A. Vedanth Srivatson

IMPACT OF THIS BOOK AND ITS CHAPTERS

2,022 Total Chapter Downloads

3 Crossref Citations

6 Dimensions Citations

Order a print copy of this book

Available on

Amazon

Delivered by

£119 (ex. VAT)*

Hardcover | Printed Full Colour

FREE SHIPPING WORLDWIDE

* Residents of European Union countries need to add a Book Value-Added Tax Rate based on their country of residence. Institutions and companies, registered as VAT taxable entities in their own EU member state, will not pay VAT by providing IntechOpen with their VAT registration number. This is made possible by the EU reverse charge method.

As an IntechOpen contributor, you can buy this book for an Exclusive Author price with discounts from 30% to 50% on retail price.

Log in to your Author Panel to purchase a book at the discounted price.

For any assistance during ordering process, contact us at [email protected]

Related books

Edited by Kelly Bennett

Digital Imaging

Edited by Muhammad Sarfraz

Infrared Spectroscopy

Edited by Theophile Theophanides

Frontiers in Guided Wave Optics and Optoelectronics

Edited by Bishnu Pal

Abiotic Stress in Plants

Edited by Arun Shanker

Anopheles mosquitoes

Edited by Sylvie Manguin

Ionic Liquids

Edited by Alexander Kokorin

Fourier Transform

Edited by Salih Salih

Artificial Neural Networks

Edited by Kenji Suzuki

Biodegradation

Edited by Rolando Chamy

Call for authors

Submit your work to intechopen.

thesis title on digital image processing

Testimonials

thesisandcode logo

  • NS 2 Implementation
  • Java/J2EE Implementation
  • Matlab Implementation
  • Simulink Implementation
  • Ansys Implementation
  • CST Implementation
  • Topic Selection
  • Synopsis Writing
  • PhD Consultancy
  • Journal Article Publication
  • Phd Thesis Writing Service

PhD Topics in Image Processing

  • PhD Topics in Big Data
  • PhD Topics in Cloud Computing
  • PhD Topics in Network Security
  • PhD Topics in Embedded Systems
  • PhD Topics in Data Mining
  • PhD Topics in Computer Science
  • PhD Topics in Electronics and Communication Engineering
  • Research Domains
  • Work Samples
  • Training Program
  • Get a Quote

Image Processing Topics

Over the decades, rapid growing digital computation is widening the academic and professional visions. Image processing is one such unit of digital computation, emerged as a whole new academic discipline, which is in a demand today. The increasing transmission of information for visual consumption, which is stored, processed, and visualised in digital format has now been the major interest area of researchers. It has now become the core of each computer science and engineering discipline.

A PhD in Image Processing is an in-depth research project on an academic topic which is focused and yet highly specialised. It should be noted that useful and informative researches are supposed to re-visit the problems posed and investigated by other researchers. Hence, your first plan is to identify area of interest within the field of latest PhD research topics in Image processing, choose a realistic topic or research problem, draw a well-defined plan, and compose a research work which can be used by others to build their research upon. To help you narrow down your quest for the topic selection for such an effective research, provided below are the PhD Topics in Image Processing:

  • Optimal Eco state network (O-ESN) based image restoration technique to improve Image quality
  • Breast cancer Detection from mammogram images with the aid of image restoration technique using HNN.
  • FODM-MNN (Fractional-Order Differentiation Model) based nodule detection from Low-Dose CT lung image.
  • Image Decomposition for Low-Dose CT Image Processing with the aid of Feature extraction and Machine learning algorithm.
  • An approach on Identification of Circuit breaks Using Morphological Characteristics Based Segmentation.
  • Efficient technique for weather forecasting based on satellite images with the aid of machine learning techniques.
  • Environmental change prediction with the aid of extensive segmentation and machine learning approach from satellite images.
  • Medical image classification for disease prediction with the aid of Machine learning approach.
  • Hybrid optimization techniques to improve feature selection in image classification techniques.
  • An efficient technique for Keratoconus disease prediction by utilizing extensive feature extraction and AI method.

These are the PhD topics in Image Processing, which as per our experts can give you a lead in deciding where to begin your preliminary research. Our team is constituted of eminent researchers in the various sub-disciplines of digital image processing such as digital photography, imaging, computer graphics and simulation. Thus, they can help you to choose one specific PhD topic which is unique, manageable, and well-researched.

For more information, contact us at [email protected] .

fourpointfive

Ratings: 2.50/5

Average Rating 2.50 / 5 based based on 10 Testimonials

  • PhD Projects in Image processing - A guide for developing re Mar 15,2022
  • Phd projects in cloud computing - Using AWS or Cloudism Mar 14,2022
  • PhD research topics in vlsi design - Important points to tak Mar 13,2022

View More..

Terms & Conditions | Privacy Policy | Sitemap | Question And Answer | ©2020 Thesis & Code . All Rights Reserved

thesisandcode googleplus

edugate

Digital Image Processing Thesis Topics

    Digital Image Processing Thesis Topics is our amazing service that helps you at right time. Our expert team provides timely solutions for all the problems you never have from other service providers. Over the last ten decades, image processing is rapidly growing in a wide range of application and industrial fields. We offer a training program for our students to get much information about image processing. Our experts are truly paramount of knowledge with potential power who offers quick responses for students. A thesis in digital image processing is a huge task. First, you plan to identify an area of interest within the field of Image processing.

Our top experts guide you to choose a realistic topic/research problem for your final year projects. Before writing your thesis, we provide you a well-defined research plan with composed research work. This makes you as my choice was the best than others. To help you, contact us for your topic selection and thesis writing.

Image Processing Thesis Topics

    Digital Image Processing Thesis Topics is our domain research service created for students with collaborative effort of our top professionals. Our current trend updated technical team expert in the various sub-fields of digital image processing includes imaging, digital photography, and also computer graphics and simulation. We offer you manageable, unique, and well-researched thesis topics so you can choose any one of the specific research topics. We have completed 5000+ Digital Image Processing Thesis Projects worldwide. Our image processing experts are specialized in operations, digital imaging, applications, techniques, and methods. Get come closer to our experts for your Digital Image Processing also in Thesis Topics.  If we go and work towards in-depth research, we can find the New Oceans.  Here’s we have provided the list of image processing software.

Image Processing Software

Categories of Software:

  • 3D graphics software: Image Studio Lite, Image SXM, AutoCAD, also in 3D animation software, free 3D graphics software, RenderMan, Global Illumination software and also Shading languages.
  • Computer vision software: OpenCV, Bing Audio, Bing Vision, Dlib, Avizo, AVM navigator, Animal, Insight Segmentation and also registration Toolkit and Softwarp.
  • Neuro imaging software: Amira, Anayze, AIR, Caret, CONN, Cambridge brain analysis, Dextroscope, Fiji, RapidMiner, and also Mango, MindRDR, LONI pipeline and Spinal Cord Toolbox
  • Bioimaging Software : 3D Slicer, DICOM, FindFace, DeepFace, Heather Dewey-Hagborg, Othanc, and also Drishti, Gimias, Ginkgo CADx, ImageJ, Invesalius, ITK-SNAP, Voreen, and Xebra

Digital Image Processing Ideas

  • Image Enhancement using point operations
  • Data Compression
  • Simple Dictionary Compression
  • Image Blur and Calibration
  • Color and Contrast Enhancement
  • Image Denoising
  • Image inpainting
  • Images Comparison
  • Optical Flow
  • Satellite imaging
  • Edges and segmentation
  • Vision through Turbulence
  • Color correction
  • 2D Fourier Transform and Convolution
  • Linear filtering
  • Image Rotation and Sampling
  • Noise Reduction
  • High Dynamic Range Imaging
  • Image Compositing
  • Mathematical Morphology also for Image Processing

Latest Digital Image Processing Thesis Topics

  • Uncorrelated component analysis also based hashing in digital image processing
  • Glacial lake outlines in tablet plateau also based on Landsat 8 imagery and Google earth engine
  • An efficient method also for fast multi exposure image fusion
  • Microfluidic PCB enabled digital signal processing also for on-chip fluorescence detection
  • Remote sensing image denoising also using parallel nonlocal means algorithm on Intel Xeon Phi Platform
  • Screen content pictures quality assessment also using Matlab in Image Processing
  • Uncertainty Aware Evaluator and also Local Consistency Aware Retriever for Blind Image Quality Assessment
  • Support vector machine classification also for retinal blood vessel segmentation
  • Accelerated cover selection steganography also using digital image processing techniques
  • High accuracy tidal flat digital evaluation model construction based on TanDEM-X Science Phase Data
  • Least two significant bits based adaptive tri-pixel unit steganography algorithm
  • Real time non local means also based despeckling using digital image processing
  • Unseen visible watermarking improved also for copyright protection of digital images
  • Image to sensor also based comparative study of PRNU multiple estimation schemes for sensors identification from NIR iris images

        These are the topics that are currently working by our top experts, and they can give you guidance in deciding where to begin your preliminary research. We hope you feel satisfied with this information. For further information, you can visit our other articles. You can also visit our experts online 24/7.

Related Pages

Services we offer.

Mathematical proof

Pseudo code

Conference Paper

Research Proposal

System Design

Literature Survey

Data Collection

Thesis Writing

Data Analysis

Rough Draft

Paper Collection

Code and Programs

Paper Writing

Course Work

COMMENTS

  1. Latest thesis topics in digital image processing| Research Topics

    The history of digital image processing dates back to early 1920s when the first application of digital image processing came into news. Many students are going for this field for their m tech thesis as well as for Ph.D. thesis. There are various thesis topics in digital image processing for M.Tech, M.Phil and Ph.D. students.

  2. Digital image processing

    Masters Thesis Digital image processing. Interest in digital image processing methods sterns from two principal application areas: improvement of pictorial information for human interpretation, and processing of scene data for autonomous machine perception. ... Title Date Uploaded Visibility Actions; File: 2021-01-16: Campus:

  3. Trending Digital Image Processing Thesis Topics [DIP Research Guidance]

    Digital image processing thesis topics are actively chosen these days, considering the scope of the topic in the near future. Here is a detailed understanding of doing projects in digital image processing. Digital image processing is the process by which digital images are modified according to the user's wish. Initially, images are an array ...

  4. PDF IMAGE CLASSIFICATION USING CONVOLUTIONAL NEURAL NETWORKS

    Oulu University of Applied Sciences Information Technology, Internet Services. Author: Hung Dao Title of the bachelor's thesis: Image Classification Using Convolutional Neural Networks Supervisor: Jukka Jauhiainen Term and year of completion: Spring 2020 Number of pages: 31. The objective of this thesis was to study the application of deep ...

  5. digital image processing Latest Research Papers

    Restoration And Protection. Abstract Digital image processing technologies are used to extract and evaluate the cracks of heritage rock in this paper. Firstly, the image needs to go through a series of image preprocessing operations such as graying, enhancement, filtering and binaryzation to filter out a large part of the noise. Then, in order ...

  6. PDF Digital Image Processing and Image Restoration

    Digital Image Processing and Image Restoration - Theseus

  7. Digital image processing in a high volume document environment

    For thesis abstract select View Thesis Title, Contents and Abstract. History. Campus location Australia. Year of Award ... Usage metrics. Categories No categories selected. Keywords. Image processing - Digital techniques Optical storage devices Electronic records Archival materials - Digitization Business records - Management - Data ...

  8. 267349 PDFs

    Nov 2023. Prasantha H S. Digital Image processing is an algorithm used to perform operations on a digital image, in order to extract some useful information or process images to enhance ...

  9. (PDF) M.Sc. Thesis: Image Encryption Techniques for ...

    The tremendous evolution in digital image processing and network communications have created a huge demand for real time secure image transmission over the Internet and through wireless networks ...

  10. Image Processing: Research Opportunities and Challenges

    An introductory chapter on digital image processing is followed by chapters on the imaging modalities: radiography, CT, MRI, nuclear medicine and ultrasound. Each chapter covers the basic physics ...

  11. PDF Image Processing, Machine Learning and Visualization for Tissue Analysis

    In this type of microscopy, tissue is illuminated using a white light source, commonly a halogen lamp in the microscope stand. Unstained tissue will appear as transparent (background color). For this reason the tissue has to be sliced into thin sections, fixated and then stained to display the desired object.

  12. Top 10 Digital Image Processing Project Topics

    Important Digital Image Processing Terminologies. Stereo Vision and Super Resolution. Multi-Spectral Remote Sensing and Imaging. Digital Photography and Imaging. Acoustic Imaging and Holographic Imaging. Computer Vision and Graphics. Image Manipulation and Retrieval. Quality Enrichment in Volumetric Imaging.

  13. Research on the Digital Image Processing Method Based on ...

    Third, process the image by column. In C language programming, the sequence will be in accordance with the order of the navigation preferred store, and the digital image data is stored in the internal system according to the array manner, with a line of pixels is continuity of data calculation and analysis of press line processing scheme, multi-threaded concurrent execution acquired data is ...

  14. RIT Scholar Works

    Explore the RIT Scholar Works, a digital collection of research papers, theses and dissertations by RIT faculty and students.

  15. PDF Design of an image acquisition and processing system A Master's Thesis

    Title of the thesis: Design of an image acquisition and processing system using configurable devices Author: Miquel López Muñoz Advisor: Juan Manuel Moreno Aróstegui Abstract This thesis consists of the evaluation of the possibility to implement a Neural Network in an FPGA instead on the more used GPU. Theoretically, an FPGA is a better ...

  16. PDF Brain Tumor Detection Model Using Digital Image Processing and Transfer

    made possible by the development of image processing technologies. The technique of classifying an image or a portion of an image based on information retrieved during image processing [5] is known as image classification. Different categorization methods exist; the most advanced method in computer vision is convolution neural networks [5].

  17. Digital Image Processing Applications

    Digital image processing can refer to a wide variety of techniques, concepts, and applications of different types of processing for different purposes. This book provides examples of digital image processing applications and presents recent research on processing concepts and techniques. Chapters cover such topics as image processing in medical physics, binarization, video processing, and more.

  18. PDF St. Mary's University

    i St. Mary's University Faculty of Informatics Department of Computer Science By: Maereg Teferi Advisor(s): Million M. (PHD) This thesis prepared by Maereg Teferi, entitled: Haricot Bean grade classification by using Digital Image Processing and submitted in partial fulfillment of the requirements for the Degree of Master

  19. PhD Topics in Image Processing

    Our team is constituted of eminent researchers in the various sub-disciplines of digital image processing such as digital photography, imaging, computer graphics and simulation. Thus, they can help you to choose one specific PhD topic which is unique, manageable, and well-researched. For more information, contact us at [email protected].

  20. (PDF) report digital image processing

    Image processing is a. method to perform operations on images like enhancing images, extracting text from image, detecting edge of image and many other operations. In digital image processing we ...

  21. Digital Image Processing Thesis Topics for Research Scholars

    A thesis in digital image processing is a huge task. First, you plan to identify an area of interest within the field of Image processing. Our top experts guide you to choose a realistic topic/research problem for your final year projects. Before writing your thesis, we provide you a well-defined research plan with composed research work.

  22. (PDF) Digital Image Watermarking Techniques: A Review

    For a secure communication model, the digital image watermarking process consists of a. watermark embedding part and a watermark extracti on part. In the watermark embedding part, at. first, the ...

  23. Recent Trends in Image Processing and Pattern Recognition

    The 5th International Conference on Recent Trends in Image Processing and Pattern Recognition (RTIP2R) aims to attract current and/or advanced research on image processing, pattern recognition, computer vision, and machine learning. The RTIP2R will take place at the Texas A&M University—Kingsville, Texas (USA), on November 22-23, 2022, in ...