S.No. | Projects | Abstract |
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1. | Offline Signature Verification Using Support Vector Machine Offline Signature Verification Using Support Vector Machine is a biometric authentication technique that employs SVM algorithms to assess the authenticity of handwritten signatures. It relies on a trained model to distinguish between genuine and forged signatures, making it a valuable tool in document security and fraud prevention. Get help | Abstract |
2. | Face Detection Using Combination of Neural Network and Adaboost Face detection using a combination of neural networks and Adaboost is an innovative approach that leverages the power of deep learning for feature extraction and Adaboost for efficient classification. This hybrid method enhances the accuracy of detecting faces in complex and varied real-world scenarios, making it a robust solution for applications like facial recognition and video surveillance. Get help | Abstract |
3. | Face Recognition System using PCA-ANN Technique with Feature Fusion Method The Face Recognition System using PCA-ANN Technique with Feature Fusion Method is an advanced biometric authentication system that combines Principal Component Analysis (PCA) for dimensionality reduction, Artificial Neural Networks (ANN) for pattern recognition, and feature fusion to enhance accuracy. This innovative approach extracts and combines facial features from multiple sources to provide robust and reliable identity verification. Get help | Abstract |
4. | Facial Feature Extraction and Textual Description Classification using SVM Facial Feature Extraction involves the process of identifying and extracting key facial attributes such as eyes, nose, and mouth from images. Textual Description Classification using SVM (Support Vector Machines) is a machine learning technique that categorizes textual descriptions into predefined classes or labels, making it useful for tasks like sentiment analysis or content categorization. Get help | Abstract |
5. | Offline Handwritten Signature Verification System Using a Supervised Neural Network Approach An Offline Handwritten Signature Verification System employs a supervised neural network approach to authenticate handwritten signatures. It analyzes unique signature patterns and characteristics, comparing them against reference signatures to validate the authenticity of a given signature, enhancing security in document verification processes. Get help | Abstract |
6. | Content Based Image Retrieval Using Color Strings Comparison Content-Based Image Retrieval (CBIR) using Color Strings Comparison is a technique that analyzes images based on their color content. It involves converting images into color strings or descriptors, allowing for efficient and accurate image search and retrieval by comparing these color representations. This method enables users to find visually similar images in a database solely based on their color characteristics. Get help | Abstract |
7. | Analysis of distance metrics in content-based image retrieval using statistical quantized histogram texture features in the DCT domain This study investigates the effectiveness of various distance metrics for content-based image retrieval. It employs statistical quantized histogram texture features in the Discrete Cosine Transform (DCT) domain to assess their performance in retrieving images based on texture characteristics. The analysis aims to optimize retrieval accuracy and efficiency in image search applications. Get help | Abstract |
8. | Enhancement of image retrieval by using colour, texture and shape features Enhancement of image retrieval involves incorporating color, texture, and shape features to improve the accuracy and efficiency of retrieving images from a database. By analyzing these multi-modal features, the system can provide more comprehensive and context-aware search results, enabling users to find relevant images with greater precision. Get help | Abstract |
9. | Global Correlation Descriptor: a novel image representation for image retrieval The Global Correlation Descriptor is an innovative image representation technique designed for image retrieval tasks. It captures intricate relationships and correlations among different regions of an image, enhancing the accuracy and efficiency of image retrieval systems by providing a more comprehensive and discriminative feature representation. Get help | Abstract |
10. | An Efficient content-based image retrieval with ant colony optimization feature selection schema based on wavelet and color features An Efficient content-based image retrieval system leverages an Ant Colony Optimization feature selection schema, which intelligently identifies the most relevant image features. This approach combines the power of wavelet and color features, enabling precise and effective image retrieval based on content, ensuring superior search accuracy and efficiency. Get help | Abstract |
11. | A New Adaptive Weighted Mean Filter for Removing Salt-and-Pepper Noise The New Adaptive Weighted Mean Filter is a sophisticated image processing technique designed to effectively eliminate salt-and-pepper noise from digital images. It employs adaptive weighting strategies to intelligently restore image details while suppressing the undesirable noise, resulting in enhanced image quality and clarity. This innovative filter is a valuable tool for improving the visual integrity of images corrupted by such noise artifacts. Get help | Abstract |
12. | An Improved Method For The Enhancement of Under Ocean Image An Improved Method for the Enhancement of Underwater Images utilizes advanced image processing techniques to enhance the clarity and quality of underwater photographs and videos, enabling better visibility and the identification of submerged objects. This innovative approach minimizes the distortion and color degradation commonly associated with underwater imaging, greatly benefiting marine researchers, underwater archaeologists, and the broader scientific community. Get help | Abstract |
13. | Edge-preserving Image Decomposition based on Saliency Map Edge-preserving image decomposition based on saliency maps is a computational technique that separates an input image into two components: a salient foreground containing high-contrast regions like edges and textures, and a less salient background representing smoother regions. This method is valuable in various computer vision tasks, such as object recognition and image editing, as it helps preserve important details while simplifying the image’s structure. Get help | Abstract |
14. | A Novel DWT based Image Securing Method using Steganography A Novel DWT-based Image Securing Method using Steganography is an advanced technique that leverages the Discrete Wavelet Transform (DWT) to embed confidential information within digital images. By exploiting the frequency domain properties of DWT, this method ensures robust and imperceptible data hiding, enhancing the security of sensitive image content while maintaining visual fidelity. Get help | Abstract |
15. | Ghost-Free High Dynamic Range Imaging Using Histogram Separation and Edge Preserving Denoising “Ghost-Free High Dynamic Range Imaging Using Histogram Separation and Edge Preserving Denoising” is an advanced image processing technique that effectively eliminates artifacts and ghosting commonly encountered in high dynamic range (HDR) imaging. By separating histograms and applying edge-preserving denoising, this method enhances the quality of HDR images, resulting in visually stunning and artifact-free pictures with improved dynamic range and clarity. Get help | Abstract |
16. | Alternating Direction Method for Balanced Image Restoration The Alternating Direction Method for Balanced Image Restoration is an iterative optimization technique used in image processing. It aims to restore distorted images by alternating between updating pixel values and enforcing image balance constraints, ensuring both high-quality restoration and preservation of overall image characteristics. | Abstract |
17. | Hybrid regularization image deblurring in the presence of impulsive noise Hybrid regularization in image deblurring with impulsive noise combines both spatial and frequency domain constraints to enhance image quality. It effectively mitigates the impact of impulsive noise while preserving fine image details, resulting in cleaner and sharper deblurred images. Get help | Abstract |
18. | Single Image Fog Removal Using Gamma transformation and median filtering Single Image Fog Removal Using Gamma transformation and median filtering is a computer vision technique that enhances visibility in foggy images. It combines the gamma transformation to adjust image contrast with median filtering to reduce noise, effectively restoring clarity and detail in hazy scenes. | Abstract |
19. | Motion blur parameters estimation for image restoration Motion blur parameter estimation is a crucial step in image restoration, where algorithms analyze the blurred image to determine key parameters such as blur direction, length, and intensity. These estimations enable the precise application of deblurring techniques, resulting in the recovery of sharp and clear images from their motion-blurred counterparts. Get help | Abstract |
20. | Motion Blurred Image Restoration Motion blurred image restoration is a digital image processing technique aimed at mitigating the blurriness caused by the movement of the camera or the subject during image capture. It involves algorithms that attempt to deconvolve the motion blur, enhancing the image’s clarity and detail to produce a sharper and more visually pleasing result. Get help | Abstract |
21. | Recursive and noise-exclusive fuzzy switching median filter for impulse noise reduction The Recursive and Noise-Exclusive Fuzzy Switching Median Filter is an advanced image processing technique designed to effectively reduce impulse noise in digital images. It employs a recursive approach, continually refining the filtering process, and utilizes fuzzy logic to intelligently distinguish between noisy and noise-free pixels, resulting in enhanced image quality with minimal loss of detail. Get help | Abstract |
22. | Satellite Image Denoising Using Bilateral Filter with SPEA2 Optimized Parameters Satellite image denoising using the Bilateral Filter with SPEA2 optimized parameters is an advanced image processing technique that effectively removes noise from satellite imagery. By harnessing the power of the Bilateral Filter with parameters fine-tuned using the SPEA2 optimization algorithm, this approach enhances the clarity and quality of satellite images, making them valuable for various applications such as remote sensing and geographic analysis. Get help | Abstract |
23. | Snowfall Detection in a Foggy Scene Snowfall detection in a foggy scene involves the use of advanced imaging or sensor technology to identify and distinguish falling snowflakes from the surrounding fog, enabling accurate monitoring and forecasting of winter weather conditions. This capability is crucial for enhancing road safety, transportation logistics, and overall situational awareness during winter storms. Get help | Abstract |
24. | A L0 norm transmission model for defogging images An L0 norm transmission model for defogging images is a mathematical approach used in image processing to estimate the thickness of fog in each pixel of an image. Unlike other transmission models, which rely on L1 or L2 norms, the L0 norm considers the presence or absence of fog pixels, making it more suitable for scenarios with sparse fog patterns. This model helps enhance the visibility and clarity of images captured in foggy conditions by effectively removing the haze. Get help | Abstract |
25. | Automated two-dimensional K-means clustering algorithm for unsupervised image segmentation The Automated two-dimensional K-means clustering algorithm is a powerful unsupervised image segmentation technique that automatically partitions an image into distinct regions based on pixel similarity. By iteratively optimizing cluster centroids, it minimizes the within-cluster variance, effectively identifying meaningful image regions without requiring prior knowledge or manual input. Get help | Abstract |
26. | A new hybrid clustering algorithm based on K-means and ant colony algorithm The new hybrid clustering algorithm combines the efficiency of K-means with the adaptability of the ant colony algorithm to enhance cluster formation. By leveraging the collective intelligence of ants and the centroid-based approach of K-means, it optimizes cluster assignments, leading to improved clustering accuracy and robustness in complex datasets. Get help | Abstract |
27. | Interactive image segmentation by improved maximal similarity based region merging Interactive image segmentation by improved maximal similarity-based region merging is a computer vision technique that enables users to efficiently and accurately delineate objects in an image. It enhances traditional region merging algorithms by considering maximal similarity criteria, resulting in more precise and user-friendly interactive segmentation tools for tasks like object extraction and image editing. Get help | Abstract |
28. | Modified Gradient Search for Level Set Based Image Segmentat Modified Gradient Search is an enhanced algorithm for Level Set Based Image Segmentation. It refines the traditional gradient-based approach by incorporating adaptive step-size adjustments and efficient convergence criteria, resulting in more accurate and faster image segmentation with reduced computational complexity. Get help | Abstract |
29. | Hybrid method based on DWT-FFT-SVD to Improved Technique on Digital Image Watermarking The Hybrid method based on DWT-FFT-SVD for Digital Image Watermarking is an advanced technique that combines discrete wavelet transform (DWT) for multi-resolution analysis, fast Fourier transform (FFT) for frequency domain manipulation, and singular value decomposition (SVD) for robust watermark embedding. Get help | Abstract |
Image Processing Research Papers For MTech & PhD
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