To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Scalable Face Restitution Via Attribute-Enhanced Sparse Code wordsIJRES Journal
To develop a scalable face image restitution system we apply Attribute-Enhanced Sparse Code words on local features extracted from face images combining with inverted indexing to construct an efficient and scalable face retrieval system. Nowadays Photos with people are the major interest of users. Among all those photos, a big percentage of them are photos with human faces. The importance and the sheer amount of human face photos make manipulations (e.g., search and mining) of large-scale human face images a really important research problem and enable many real world applications. Thus, with the exponentially growing photos, large-scale content-based face image retrieval is an enabling technology for many emerging applications. To utilize automatically detected human attributes that contain semantic cues of the face photos to improve content based face retrieval by constructing semantic code words for efficient large-scale face retrieval. By leveraging human attributes in a scalable and systematic framework, we propose two orthogonal methods named attribute-enhanced sparse coding and attribute embedded inverted indexing to improve the face retrieval in the offline database. We investigate the effectiveness of different attributes and vital factors essential for face retrieval.
This document provides a comprehensive review of recent developments in content-based image retrieval and feature extraction. It discusses various low-level visual features used for image retrieval, including color, texture, shape, and spatial features. It also reviews approaches that fuse low-level features and use local features. Machine learning and deep learning techniques for content-based image retrieval are also summarized. The document concludes by discussing open challenges and directions for future research in this area.
Image retrieval and re ranking techniques - a surveysipij
There is a huge amount of research work focusing on the searching, retrieval and re-ranking of images in
the image database. The diverse and scattered work in this domain needs to be collected and organized for
easy and quick reference.
Relating to the above context, this paper gives a brief overview of various image retrieval and re-ranking
techniques. Starting with the introduction to existing system the paper proceeds through the core
architecture of image harvesting and retrieval system to the different Re-ranking techniques. These
techniques are discussed in terms of approaches, methodologies and findings and are listed in tabular form
for quick review.
A Novel Method for Content Based Image Retrieval using Local Features and SVM...IRJET Journal
1) The document presents a novel approach for content-based image retrieval that uses local features like color, texture, and edges extracted from images.
2) It extracts these features and uses an SVM classifier to optimize retrieval results. This improves accuracy compared to other techniques that use only one content feature.
3) The proposed system is tested on parameters like accuracy, sensitivity, specificity, error rate, and retrieval time, and shows better performance than other methods.
This document discusses optimizing content-based image retrieval in peer-to-peer systems. It summarizes previous work on content-based image retrieval using multi-instance queries in peer-to-peer networks. The authors propose two optimizations to previous work: 1) clustering peers to reduce search time, and 2) constructing a search index at cluster heads to avoid searching each peer. Their experiments show the proposed approach reduces search time compared to previous work, with some reduction in accuracy that improves as more nodes are added. The authors plan future work to analyze performance with different cluster sizes and representations for faster search.
Content Based Video Retrieval Using Integrated Feature Extraction and Persona...IJERD Editor
This document describes a content-based video retrieval system that extracts features from videos and uses those features to retrieve matching videos from a database. The system first segments videos into frames, applies optical character recognition (OCR) to extract text and automatic speech recognition (ASR) to extract keywords. It then extracts additional low-level visual features like color, texture and edges. All the extracted keywords and features are stored in a database. When a query video is input, the same features are extracted and used to search the database for similar videos. The results are then re-ranked based on the user's past viewing history to personalize the results. The system is evaluated on a database of 15 videos and is able to retrieve matching videos
The document proposes a method to re-rank images returned from an image search engine by incorporating visual similarity. It extracts interest points from images to determine visual content. Images are then re-ranked based on visual similarity, as determined by comparing interest points. A graph model is generated to represent visual similarities between images as links. PageRank is then applied to the graph to assign priority scores to images, with more visually similar images being ranked higher. The goal is to return images that are both relevant and visually diverse.
This document describes a sketch-based image retrieval system that uses freehand sketches as queries to retrieve similar colored images from a database. The system first extracts features like color, texture, and shape from the sketch using descriptors such as Color and Edge Directivity Descriptor (CEDD) and Edge Histogram Descriptor (EHD). It then clusters the images in the database using k-means clustering based on the similarity of their features to the sketch. Finally, the system retrieves the most similar colored image from the clustered images as the output match for the user's sketch query.
Iaetsd efficient retrieval of face image fromIaetsd Iaetsd
This document proposes two methods for efficient retrieval of face images from large scale databases: attribute-enhanced sparse coding (ASC) and attribute-embedded inverted indexing (AEI). ASC uses automatically detected human attributes to generate codewords that provide semantic descriptions of faces during offline processing. AEI constructs an inverted index for efficient online retrieval using the codewords. Reranking is also used to discard forged images and improve retrieval accuracy. Experimental results demonstrate the proposed system can efficiently retrieve relevant face images in milliseconds while eliminating forged images through reranking.
Iaetsd enhancement of face retrival desigend forIaetsd Iaetsd
This document proposes two methods for enhancing content-based face image retrieval: attribute-enhanced sparse coding and attribute-embedded inverted indexing. Attribute-enhanced sparse coding uses human attributes to generate semantic-aware codewords during offline encoding. Attribute-embedded inverted indexing represents human attributes of query images as binary signatures for efficient online retrieval. Experimental results showed these methods reduced quantization error and improved face retrieval accuracy on public datasets, while maintaining scalability.
This document discusses a framework for search-based face annotation by mining weakly labeled facial images from the web. It proposes an unsupervised label refinement (ULR) approach to refine the noisy and incomplete labels of web images using machine learning. The learning problem is formulated as a convex optimization and efficient algorithms are developed to solve the large-scale task. Additionally, a clustering-based approximation algorithm is proposed to improve scalability. The proposed system achieves promising results in experiments by enhancing label quality compared to other approaches.
Precision face image retrieval by extracting the face features and comparing ...prjpublications
This document describes a proposed method for improving content-based face image retrieval. The method uses two orthogonal techniques: attribute-enhanced sparse coding and attribute-embedded inverted indexing. Attribute-enhanced sparse coding exploits global features to construct semantic codewords offline. Attribute-embedded inverted indexing considers local query image features in a binary signature to efficiently retrieve images. By combining these techniques, the method reduces errors and achieves better face image extraction from databases compared to existing content-based retrieval systems. It works by extracting features from the query image, matching them to database images, and returning ranked results.
Scalable face image retrieval using attribute enhanced sparse codewordsSasi Kumar
This document proposes a new approach to content-based face image retrieval using both low-level features and high-level human attributes. It introduces two main modules: 1) Attribute-enhanced sparse coding which uses attributes to construct semantic codewords in the offline stage. 2) Attribute-embedded inverted indexing which embeds attribute information into the index structure and allows efficient retrieval online by considering the query image's local attributes. The proposed approach combines these two orthogonal methods to significantly improve face image retrieval by incorporating human attributes into the image representation and indexing.
International Journal of Engineering and Science Invention (IJESI) inventionjournals
International Journal of Engineering and Science Invention (IJESI) is an international journal intended for professionals and researchers in all fields of computer science and electronics. IJESI publishes research articles and reviews within the whole field Engineering Science and Technology, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online
Applications of spatial features in cbir a surveycsandit
With advances in the computer technology and the World Wide Web there has been an
explosion in the amount and complexity of multimedia data that are generated, stored,
transmitted, analyzed, and accessed. In order to extract useful information from this huge
amount of data, many content based image retrieval (CBIR) systems have been developed in the
last decade. A typical CBIR system captures image features that represent image properties
such as color, texture, or shape of objects in the query image and try to retrieve images from the
database with similar features. Retrieval efficiency and accuracy are the important issues in
designing Content Based Image Retrieval System. The Shape and Spatial features are quiet easy
and simple to derive and effective. Researchers are moving towards finding spatial features and
the scope of implementing these features in to the image retrieval framework for reducing the
semantic gap. This Survey paper focuses on the detailed review of different methods and their
evaluation techniques used in the recent works based on spatial features in CBIR systems.
Finally, several recommendations for future research directions have been suggested based on
the recent technologies.
APPLICATIONS OF SPATIAL FEATURES IN CBIR : A SURVEYcscpconf
This document summarizes research on using spatial features for content-based image retrieval (CBIR). It first discusses common CBIR techniques like feature extraction, selection, and similarity measurement. It then reviews several related works that extract spatial features like edge histograms and color difference histograms. Experimental results show integrating spatial information through image partitioning can improve semantic concept detection performance. While finer partitions carry more spatial data, coarser partitions like 2x2 are preferred to avoid feature mismatch. Future work may explore combining multiple feature domains and contexts to further enhance retrieval accuracy and effectiveness for large-scale image datasets.
This document provides a summary of a minor project report on image recognition submitted in partial fulfillment of the requirements for a Bachelor of Technology degree in Computer Science and Engineering. The report was submitted by Bhaskar Tripathi and Joel Jose in October 2018 under the supervision of Dr. P. Mohamed Fathimal, Assistant Professor in the Department of Computer Science and Engineering at SRM Institute of Science and Technology. The report includes acknowledgements, a table of contents, and chapters on the introduction, project details, tools and technologies used, proposed system architecture, modules and functionality.
JPM1412 Mining Weakly Labeled Web Facial Images for Search-Based Face Annota...chennaijp
This paper proposes a search-based face annotation framework that mines weakly labeled facial images from the web. It introduces an unsupervised label refinement approach using machine learning to improve the noisy and incomplete labels of web images. A clustering-based approximation algorithm is also proposed to speed up the labeling process and improve scalability. Experimental results on a large test dataset show the label refinement algorithms significantly boost performance of the search-based face annotation scheme.
FACE EXPRESSION IDENTIFICATION USING IMAGE FEATURE CLUSTRING AND QUERY SCHEME...Editor IJMTER
Web mining techniques are used to analyze the web page contents and usage details. Human facial
images are shared in the internet and tagged with additional information. Auto face annotation techniques are used
to annotate facial images automatically. Annotations are used in online photo search and management.
Classification techniques are used to assign the facial annotation. Supervised or semi-supervised machine learning
techniques are used to train the classification models. Facial images with labels are used in the training process.
Noisy and incomplete labels are referred as weak labels. Search-based face annotation (SBFA) is assigned by
mining weakly labeled facial images available on the World Wide Web (WWW). Unsupervised label refinement
(ULR) approach is used for refining the labels of web facial images with machine learning techniques. ULR
scheme is used to enhance the label quality using graph-based and low-rank learning approach. The training phase
is designed with facial image collection, facial feature extraction, feature indexing and label refinement learning
steps. Similar face retrieval and voting based face annotation tasks are carried out under the testing phase.
Clustering-Based Approximation (CBA) algorithm is applied to improve the scalability. Bisecting K-means
clustering based algorithm (BCBA) and divisive clustering based algorithm (DCBA) are used to group up the
facial images. Multi step Gradient Algorithm is used for label refinement process. The web face annotation scheme
is enhanced to improve the label quality with low refinement overhead. Noise reduction is method is integrated
with the label refinement process. Duplicate name removal process is integrated with the system. The indexing
scheme is enhanced with weight values for the labels. Social contextual information is used to manage the query
facial image relevancy issues.
A SURVEY ON CONTENT BASED IMAGE RETRIEVAL USING MACHINE LEARNINGIRJET Journal
This document provides a literature review of recent research on content-based image retrieval using machine learning techniques. It summarizes 8 research papers that used approaches like convolutional neural networks, color histograms, deep learning, hashing functions and more to extract image features and retrieve similar images from databases. The goal of content-based image retrieval is to find images that are semantically similar to a query image based on visual features.
This presentation summarizes a vertical image search engine that integrates text and visual features to improve image retrieval performance. The system architecture includes a crawler, preprocessor, and search interface. It represents keywords in visual feature space, weights visual features based on their relevance to keywords, and generates a visual thesaurus. The algorithm optimizes weight vectors, analyzes feature quality, and expands queries during search. Key modules are the user interface, parser, image processor, and crawler. In conclusion, combining text and visual features allows the system to select meaningful features that reflect user intentions for effective vertical search.
Discovering Human Characteristic using Face AnalysisCIB Egypt
The document discusses developing a system to discover human characteristics using face analysis. It will use image processing, a database, and machine learning. The system will detect faces, extract features, classify the features using neural networks, and describe the human characteristics. It outlines the planning, design, and implementation phases. The future plans are to create mobile and web applications and add additional analysis methods like handwriting.
IRJET- Image Seeker:Finding Similar ImagesIRJET Journal
This document describes Image Seeker, an image retrieval system that allows users to search for similar images by inputting a query image. Image Seeker uses shape context and SIFT descriptors to represent and match images. It compresses image representations using deep autoencoding to greatly improve storage and search efficiency. To rank search results, Image Seeker semantically interprets the query image and performs median filtering on the distance of retrieved images from the query. Image Seeker was developed to enable searching large image collections in applications like trademarks, art galleries, retail, fashion, interior design, and law enforcement.
Scalable face image retrieval using attribute enhanced sparse codewordsIEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Reversible watermarking based on invariant image classification and dynamic h...IEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Ad
More Related Content
Similar to Scalable face image retrieval using attribute enhanced sparse codewords (20)
Iaetsd efficient retrieval of face image fromIaetsd Iaetsd
This document proposes two methods for efficient retrieval of face images from large scale databases: attribute-enhanced sparse coding (ASC) and attribute-embedded inverted indexing (AEI). ASC uses automatically detected human attributes to generate codewords that provide semantic descriptions of faces during offline processing. AEI constructs an inverted index for efficient online retrieval using the codewords. Reranking is also used to discard forged images and improve retrieval accuracy. Experimental results demonstrate the proposed system can efficiently retrieve relevant face images in milliseconds while eliminating forged images through reranking.
Iaetsd enhancement of face retrival desigend forIaetsd Iaetsd
This document proposes two methods for enhancing content-based face image retrieval: attribute-enhanced sparse coding and attribute-embedded inverted indexing. Attribute-enhanced sparse coding uses human attributes to generate semantic-aware codewords during offline encoding. Attribute-embedded inverted indexing represents human attributes of query images as binary signatures for efficient online retrieval. Experimental results showed these methods reduced quantization error and improved face retrieval accuracy on public datasets, while maintaining scalability.
This document discusses a framework for search-based face annotation by mining weakly labeled facial images from the web. It proposes an unsupervised label refinement (ULR) approach to refine the noisy and incomplete labels of web images using machine learning. The learning problem is formulated as a convex optimization and efficient algorithms are developed to solve the large-scale task. Additionally, a clustering-based approximation algorithm is proposed to improve scalability. The proposed system achieves promising results in experiments by enhancing label quality compared to other approaches.
Precision face image retrieval by extracting the face features and comparing ...prjpublications
This document describes a proposed method for improving content-based face image retrieval. The method uses two orthogonal techniques: attribute-enhanced sparse coding and attribute-embedded inverted indexing. Attribute-enhanced sparse coding exploits global features to construct semantic codewords offline. Attribute-embedded inverted indexing considers local query image features in a binary signature to efficiently retrieve images. By combining these techniques, the method reduces errors and achieves better face image extraction from databases compared to existing content-based retrieval systems. It works by extracting features from the query image, matching them to database images, and returning ranked results.
Scalable face image retrieval using attribute enhanced sparse codewordsSasi Kumar
This document proposes a new approach to content-based face image retrieval using both low-level features and high-level human attributes. It introduces two main modules: 1) Attribute-enhanced sparse coding which uses attributes to construct semantic codewords in the offline stage. 2) Attribute-embedded inverted indexing which embeds attribute information into the index structure and allows efficient retrieval online by considering the query image's local attributes. The proposed approach combines these two orthogonal methods to significantly improve face image retrieval by incorporating human attributes into the image representation and indexing.
International Journal of Engineering and Science Invention (IJESI) inventionjournals
International Journal of Engineering and Science Invention (IJESI) is an international journal intended for professionals and researchers in all fields of computer science and electronics. IJESI publishes research articles and reviews within the whole field Engineering Science and Technology, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online
Applications of spatial features in cbir a surveycsandit
With advances in the computer technology and the World Wide Web there has been an
explosion in the amount and complexity of multimedia data that are generated, stored,
transmitted, analyzed, and accessed. In order to extract useful information from this huge
amount of data, many content based image retrieval (CBIR) systems have been developed in the
last decade. A typical CBIR system captures image features that represent image properties
such as color, texture, or shape of objects in the query image and try to retrieve images from the
database with similar features. Retrieval efficiency and accuracy are the important issues in
designing Content Based Image Retrieval System. The Shape and Spatial features are quiet easy
and simple to derive and effective. Researchers are moving towards finding spatial features and
the scope of implementing these features in to the image retrieval framework for reducing the
semantic gap. This Survey paper focuses on the detailed review of different methods and their
evaluation techniques used in the recent works based on spatial features in CBIR systems.
Finally, several recommendations for future research directions have been suggested based on
the recent technologies.
APPLICATIONS OF SPATIAL FEATURES IN CBIR : A SURVEYcscpconf
This document summarizes research on using spatial features for content-based image retrieval (CBIR). It first discusses common CBIR techniques like feature extraction, selection, and similarity measurement. It then reviews several related works that extract spatial features like edge histograms and color difference histograms. Experimental results show integrating spatial information through image partitioning can improve semantic concept detection performance. While finer partitions carry more spatial data, coarser partitions like 2x2 are preferred to avoid feature mismatch. Future work may explore combining multiple feature domains and contexts to further enhance retrieval accuracy and effectiveness for large-scale image datasets.
This document provides a summary of a minor project report on image recognition submitted in partial fulfillment of the requirements for a Bachelor of Technology degree in Computer Science and Engineering. The report was submitted by Bhaskar Tripathi and Joel Jose in October 2018 under the supervision of Dr. P. Mohamed Fathimal, Assistant Professor in the Department of Computer Science and Engineering at SRM Institute of Science and Technology. The report includes acknowledgements, a table of contents, and chapters on the introduction, project details, tools and technologies used, proposed system architecture, modules and functionality.
JPM1412 Mining Weakly Labeled Web Facial Images for Search-Based Face Annota...chennaijp
This paper proposes a search-based face annotation framework that mines weakly labeled facial images from the web. It introduces an unsupervised label refinement approach using machine learning to improve the noisy and incomplete labels of web images. A clustering-based approximation algorithm is also proposed to speed up the labeling process and improve scalability. Experimental results on a large test dataset show the label refinement algorithms significantly boost performance of the search-based face annotation scheme.
FACE EXPRESSION IDENTIFICATION USING IMAGE FEATURE CLUSTRING AND QUERY SCHEME...Editor IJMTER
Web mining techniques are used to analyze the web page contents and usage details. Human facial
images are shared in the internet and tagged with additional information. Auto face annotation techniques are used
to annotate facial images automatically. Annotations are used in online photo search and management.
Classification techniques are used to assign the facial annotation. Supervised or semi-supervised machine learning
techniques are used to train the classification models. Facial images with labels are used in the training process.
Noisy and incomplete labels are referred as weak labels. Search-based face annotation (SBFA) is assigned by
mining weakly labeled facial images available on the World Wide Web (WWW). Unsupervised label refinement
(ULR) approach is used for refining the labels of web facial images with machine learning techniques. ULR
scheme is used to enhance the label quality using graph-based and low-rank learning approach. The training phase
is designed with facial image collection, facial feature extraction, feature indexing and label refinement learning
steps. Similar face retrieval and voting based face annotation tasks are carried out under the testing phase.
Clustering-Based Approximation (CBA) algorithm is applied to improve the scalability. Bisecting K-means
clustering based algorithm (BCBA) and divisive clustering based algorithm (DCBA) are used to group up the
facial images. Multi step Gradient Algorithm is used for label refinement process. The web face annotation scheme
is enhanced to improve the label quality with low refinement overhead. Noise reduction is method is integrated
with the label refinement process. Duplicate name removal process is integrated with the system. The indexing
scheme is enhanced with weight values for the labels. Social contextual information is used to manage the query
facial image relevancy issues.
A SURVEY ON CONTENT BASED IMAGE RETRIEVAL USING MACHINE LEARNINGIRJET Journal
This document provides a literature review of recent research on content-based image retrieval using machine learning techniques. It summarizes 8 research papers that used approaches like convolutional neural networks, color histograms, deep learning, hashing functions and more to extract image features and retrieve similar images from databases. The goal of content-based image retrieval is to find images that are semantically similar to a query image based on visual features.
This presentation summarizes a vertical image search engine that integrates text and visual features to improve image retrieval performance. The system architecture includes a crawler, preprocessor, and search interface. It represents keywords in visual feature space, weights visual features based on their relevance to keywords, and generates a visual thesaurus. The algorithm optimizes weight vectors, analyzes feature quality, and expands queries during search. Key modules are the user interface, parser, image processor, and crawler. In conclusion, combining text and visual features allows the system to select meaningful features that reflect user intentions for effective vertical search.
Discovering Human Characteristic using Face AnalysisCIB Egypt
The document discusses developing a system to discover human characteristics using face analysis. It will use image processing, a database, and machine learning. The system will detect faces, extract features, classify the features using neural networks, and describe the human characteristics. It outlines the planning, design, and implementation phases. The future plans are to create mobile and web applications and add additional analysis methods like handwriting.
IRJET- Image Seeker:Finding Similar ImagesIRJET Journal
This document describes Image Seeker, an image retrieval system that allows users to search for similar images by inputting a query image. Image Seeker uses shape context and SIFT descriptors to represent and match images. It compresses image representations using deep autoencoding to greatly improve storage and search efficiency. To rank search results, Image Seeker semantically interprets the query image and performs median filtering on the distance of retrieved images from the query. Image Seeker was developed to enable searching large image collections in applications like trademarks, art galleries, retail, fashion, interior design, and law enforcement.
Scalable face image retrieval using attribute enhanced sparse codewordsIEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Reversible watermarking based on invariant image classification and dynamic h...IEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Noise reduction based on partial reference, dual-tree complex wavelet transfo...IEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Local directional number pattern for face analysis face and expression recogn...IEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
An access point based fec mechanism for video transmission over wireless la nsIEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Spoc a secure and privacy preserving opportunistic computing framework for mo...IEEEFINALYEARPROJECTS
The document proposes a secure and privacy-preserving opportunistic computing framework called SPOC for mobile healthcare emergencies. SPOC leverages spare resources on smartphones to process computationally intensive personal health information during emergencies while minimizing privacy disclosure. It introduces an efficient user-centric access control based on attribute-based access control and a new privacy-preserving scalar product computation technique to allow medical users to decide who can help process their data. Security analysis shows SPOC can achieve user-centric privacy control and performance evaluations show it provides reliable processing and transmission of personal health information while minimizing privacy disclosure during mobile healthcare emergencies.
Secure and efficient data transmission for cluster based wireless sensor netw...IEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Privacy preserving back propagation neural network learning over arbitrarily ...IEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Geo community-based broadcasting for data dissemination in mobile social netw...IEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Enabling data dynamic and indirect mutual trust for cloud computing storage s...IEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Dynamic resource allocation using virtual machines for cloud computing enviro...IEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
A secure protocol for spontaneous wireless ad hoc networks creationIEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
Utility privacy tradeoff in databases an information-theoretic approachIEEEFINALYEARPROJECTS
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - [email protected]¬m-Visit Our Website: www.finalyearprojects.org
UiPath Community Berlin: Orchestrator API, Swagger, and Test Manager APIUiPathCommunity
Join this UiPath Community Berlin meetup to explore the Orchestrator API, Swagger interface, and the Test Manager API. Learn how to leverage these tools to streamline automation, enhance testing, and integrate more efficiently with UiPath. Perfect for developers, testers, and automation enthusiasts!
📕 Agenda
Welcome & Introductions
Orchestrator API Overview
Exploring the Swagger Interface
Test Manager API Highlights
Streamlining Automation & Testing with APIs (Demo)
Q&A and Open Discussion
Perfect for developers, testers, and automation enthusiasts!
👉 Join our UiPath Community Berlin chapter: https://community.uipath.com/berlin/
This session streamed live on April 29, 2025, 18:00 CET.
Check out all our upcoming UiPath Community sessions at https://community.uipath.com/events/.
#StandardsGoals for 2025: Standards & certification roundup - Tech Forum 2025BookNet Canada
Book industry standards are evolving rapidly. In the first part of this session, we’ll share an overview of key developments from 2024 and the early months of 2025. Then, BookNet’s resident standards expert, Tom Richardson, and CEO, Lauren Stewart, have a forward-looking conversation about what’s next.
Link to recording, transcript, and accompanying resource: https://bnctechforum.ca/sessions/standardsgoals-for-2025-standards-certification-roundup/
Presented by BookNet Canada on May 6, 2025 with support from the Department of Canadian Heritage.
HCL Nomad Web – Best Practices und Verwaltung von Multiuser-Umgebungenpanagenda
Webinar Recording: https://www.panagenda.com/webinars/hcl-nomad-web-best-practices-und-verwaltung-von-multiuser-umgebungen/
HCL Nomad Web wird als die nächste Generation des HCL Notes-Clients gefeiert und bietet zahlreiche Vorteile, wie die Beseitigung des Bedarfs an Paketierung, Verteilung und Installation. Nomad Web-Client-Updates werden “automatisch” im Hintergrund installiert, was den administrativen Aufwand im Vergleich zu traditionellen HCL Notes-Clients erheblich reduziert. Allerdings stellt die Fehlerbehebung in Nomad Web im Vergleich zum Notes-Client einzigartige Herausforderungen dar.
Begleiten Sie Christoph und Marc, während sie demonstrieren, wie der Fehlerbehebungsprozess in HCL Nomad Web vereinfacht werden kann, um eine reibungslose und effiziente Benutzererfahrung zu gewährleisten.
In diesem Webinar werden wir effektive Strategien zur Diagnose und Lösung häufiger Probleme in HCL Nomad Web untersuchen, einschließlich
- Zugriff auf die Konsole
- Auffinden und Interpretieren von Protokolldateien
- Zugriff auf den Datenordner im Cache des Browsers (unter Verwendung von OPFS)
- Verständnis der Unterschiede zwischen Einzel- und Mehrbenutzerszenarien
- Nutzung der Client Clocking-Funktion
Dev Dives: Automate and orchestrate your processes with UiPath MaestroUiPathCommunity
This session is designed to equip developers with the skills needed to build mission-critical, end-to-end processes that seamlessly orchestrate agents, people, and robots.
📕 Here's what you can expect:
- Modeling: Build end-to-end processes using BPMN.
- Implementing: Integrate agentic tasks, RPA, APIs, and advanced decisioning into processes.
- Operating: Control process instances with rewind, replay, pause, and stop functions.
- Monitoring: Use dashboards and embedded analytics for real-time insights into process instances.
This webinar is a must-attend for developers looking to enhance their agentic automation skills and orchestrate robust, mission-critical processes.
👨🏫 Speaker:
Andrei Vintila, Principal Product Manager @UiPath
This session streamed live on April 29, 2025, 16:00 CET.
Check out all our upcoming Dev Dives sessions at https://community.uipath.com/dev-dives-automation-developer-2025/.
Technology Trends in 2025: AI and Big Data AnalyticsInData Labs
At InData Labs, we have been keeping an ear to the ground, looking out for AI-enabled digital transformation trends coming our way in 2025. Our report will provide a look into the technology landscape of the future, including:
-Artificial Intelligence Market Overview
-Strategies for AI Adoption in 2025
-Anticipated drivers of AI adoption and transformative technologies
-Benefits of AI and Big data for your business
-Tips on how to prepare your business for innovation
-AI and data privacy: Strategies for securing data privacy in AI models, etc.
Download your free copy nowand implement the key findings to improve your business.
Spark is a powerhouse for large datasets, but when it comes to smaller data workloads, its overhead can sometimes slow things down. What if you could achieve high performance and efficiency without the need for Spark?
At S&P Global Commodity Insights, having a complete view of global energy and commodities markets enables customers to make data-driven decisions with confidence and create long-term, sustainable value. 🌍
Explore delta-rs + CDC and how these open-source innovations power lightweight, high-performance data applications beyond Spark! 🚀
Special Meetup Edition - TDX Bengaluru Meetup #52.pptxshyamraj55
We’re bringing the TDX energy to our community with 2 power-packed sessions:
🛠️ Workshop: MuleSoft for Agentforce
Explore the new version of our hands-on workshop featuring the latest Topic Center and API Catalog updates.
📄 Talk: Power Up Document Processing
Dive into smart automation with MuleSoft IDP, NLP, and Einstein AI for intelligent document workflows.
Vaibhav Gupta BAML: AI work flows without Hallucinationsjohn409870
Shipping Agents
Vaibhav Gupta
Cofounder @ Boundary
in/vaigup
boundaryml/baml
Imagine if every API call you made
failed only 5% of the time
boundaryml/baml
Imagine if every LLM call you made
failed only 5% of the time
boundaryml/baml
Imagine if every LLM call you made
failed only 5% of the time
boundaryml/baml
Fault tolerant systems are hard
but now everything must be
fault tolerant
boundaryml/baml
We need to change how we
think about these systems
Aaron Villalpando
Cofounder @ Boundary
Boundary
Combinator
boundaryml/baml
We used to write websites like this:
boundaryml/baml
But now we do this:
boundaryml/baml
Problems web dev had:
boundaryml/baml
Problems web dev had:
Strings. Strings everywhere.
boundaryml/baml
Problems web dev had:
Strings. Strings everywhere.
State management was impossible.
boundaryml/baml
Problems web dev had:
Strings. Strings everywhere.
State management was impossible.
Dynamic components? forget about it.
boundaryml/baml
Problems web dev had:
Strings. Strings everywhere.
State management was impossible.
Dynamic components? forget about it.
Reuse components? Good luck.
boundaryml/baml
Problems web dev had:
Strings. Strings everywhere.
State management was impossible.
Dynamic components? forget about it.
Reuse components? Good luck.
Iteration loops took minutes.
boundaryml/baml
Problems web dev had:
Strings. Strings everywhere.
State management was impossible.
Dynamic components? forget about it.
Reuse components? Good luck.
Iteration loops took minutes.
Low engineering rigor
boundaryml/baml
React added engineering rigor
boundaryml/baml
The syntax we use changes how we
think about problems
boundaryml/baml
We used to write agents like this:
boundaryml/baml
Problems agents have:
boundaryml/baml
Problems agents have:
Strings. Strings everywhere.
Context management is impossible.
Changing one thing breaks another.
New models come out all the time.
Iteration loops take minutes.
boundaryml/baml
Problems agents have:
Strings. Strings everywhere.
Context management is impossible.
Changing one thing breaks another.
New models come out all the time.
Iteration loops take minutes.
Low engineering rigor
boundaryml/baml
Agents need
the expressiveness of English,
but the structure of code
F*** You, Show Me The Prompt.
boundaryml/baml
<show don’t tell>
Less prompting +
More engineering
=
Reliability +
Maintainability
BAML
Sam
Greg Antonio
Chris
turned down
openai to join
ex-founder, one
of the earliest
BAML users
MIT PhD
20+ years in
compilers
made his own
database, 400k+
youtube views
Vaibhav Gupta
in/vaigup
[email protected]
boundaryml/baml
Thank you!
Massive Power Outage Hits Spain, Portugal, and France: Causes, Impact, and On...Aqusag Technologies
In late April 2025, a significant portion of Europe, particularly Spain, Portugal, and parts of southern France, experienced widespread, rolling power outages that continue to affect millions of residents, businesses, and infrastructure systems.
Social Media App Development Company-EmizenTechSteve Jonas
EmizenTech is a trusted Social Media App Development Company with 11+ years of experience in building engaging and feature-rich social platforms. Our team of skilled developers delivers custom social media apps tailored to your business goals and user expectations. We integrate real-time chat, video sharing, content feeds, notifications, and robust security features to ensure seamless user experiences. Whether you're creating a new platform or enhancing an existing one, we offer scalable solutions that support high performance and future growth. EmizenTech empowers businesses to connect users globally, boost engagement, and stay competitive in the digital social landscape.
Quantum Computing Quick Research Guide by Arthur MorganArthur Morgan
This is a Quick Research Guide (QRG).
QRGs include the following:
- A brief, high-level overview of the QRG topic.
- A milestone timeline for the QRG topic.
- Links to various free online resource materials to provide a deeper dive into the QRG topic.
- Conclusion and a recommendation for at least two books available in the SJPL system on the QRG topic.
QRGs planned for the series:
- Artificial Intelligence QRG
- Quantum Computing QRG
- Big Data Analytics QRG
- Spacecraft Guidance, Navigation & Control QRG (coming 2026)
- UK Home Computing & The Birth of ARM QRG (coming 2027)
Any questions or comments?
- Please contact Arthur Morgan at [email protected].
100% human made.
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep DiveScyllaDB
Want to learn practical tips for designing systems that can scale efficiently without compromising speed?
Join us for a workshop where we’ll address these challenges head-on and explore how to architect low-latency systems using Rust. During this free interactive workshop oriented for developers, engineers, and architects, we’ll cover how Rust’s unique language features and the Tokio async runtime enable high-performance application development.
As you explore key principles of designing low-latency systems with Rust, you will learn how to:
- Create and compile a real-world app with Rust
- Connect the application to ScyllaDB (NoSQL data store)
- Negotiate tradeoffs related to data modeling and querying
- Manage and monitor the database for consistently low latencies
Increasing Retail Store Efficiency How can Planograms Save Time and Money.pptxAnoop Ashok
In today's fast-paced retail environment, efficiency is key. Every minute counts, and every penny matters. One tool that can significantly boost your store's efficiency is a well-executed planogram. These visual merchandising blueprints not only enhance store layouts but also save time and money in the process.
Role of Data Annotation Services in AI-Powered ManufacturingAndrew Leo
From predictive maintenance to robotic automation, AI is driving the future of manufacturing. But without high-quality annotated data, even the smartest models fall short.
Discover how data annotation services are powering accuracy, safety, and efficiency in AI-driven manufacturing systems.
Precision in data labeling = Precision on the production floor.
Role of Data Annotation Services in AI-Powered ManufacturingAndrew Leo
Ad
Scalable face image retrieval using attribute enhanced sparse codewords
1. Scalable Face Image Retrieval using Attribute-Enhanced Sparse
Codewords
ABSTRACT
Photos with people are the major interest of users. Thus, with the exponentially growing photos, large-scale content-
based face image retrieval is an enabling technology for many emerging applications. In this work, we aim to utilize
automatically detected human attributes that contain semantic cues of the face photos to improve content based face
retrieval by constructing semantic code words for efficient large-scale face retrieval. By leveraging human attributes in a
scalable and systematic framework, we propose two orthogonal methods named attribute-enhanced sparse coding and
attribute embedded inverted indexing to improve the face retrieval in the offline and online stages. We investigate the
effectiveness of different attributes and vital factors essential for face retrieval. Experimenting on two public datasets,
the results show that the proposed methods can achieve up to 43.5% relative improvement in MAP compared to the
existing methods.
EXISTING SYSTEM
Existing systems ignore strong, face-specific geometric constraints among different visual words in a face image. Recent
works on face recognition have proposed various discriminative facial features. However, these features are typically
high-dimensional and global, thus not suitable for quantization and inverted indexing. In other words, using such global
features in a retrieval sys- tem requires essentially a linear scan of the whole database in order to process a query, which
is prohibitive for a web- scale image database.
GLOBALSOFT TECHNOLOGIES
IEEE PROJECTS & SOFTWARE DEVELOPMENTS
IEEE FINAL YEAR PROJECTS|IEEE ENGINEERING PROJECTS|IEEE STUDENTS PROJECTS|IEEE
BULK PROJECTS|BE/BTECH/ME/MTECH/MS/MCA PROJECTS|CSE/IT/ECE/EEE PROJECTS
CELL: +91 98495 39085, +91 99662 35788, +91 98495 57908, +91 97014 40401
Visit: www.finalyearprojects.org Mail to:[email protected]
2. PROPOSED SYSTEM
We propose two orthogonal methods named attribute-enhanced sparse coding and attribute-embedded
inverted indexing. Attribute-enhanced sparse coding exploits the global structure of feature space and uses several
important human attributes combined with low-level features to construct semantic code words in the offline stage. On
the other hand, attribute-embedded inverted indexing locally considers human attributes of the designated query image
in a binary signature and provides efficient retrieval in the online stage.
MODULE DESCRIPTION:
1. content-based image search
2. Attribute based search
3. Face Image Retrieval
1. content-based image search:
Content-based image retrieval (CBIR), also known as query by image content (QBIC) and content-based visual
information retrieval (CBVIR) is the application of computer vision techniques to the image retrieval problem,
that is, the problem of searching for digital images in large databases.
2. Attribute based search:
Attribute detection has adequate quality on many different human attributes. Using these human attributes,
many researchers have achieved promising results in different applications such as face verification, face
identification, keyword-based face image retrieval, and similar attribute search.
3. Face Image Retrieval
The proposed work is a facial image retrieval model for problem of similar facial images searching and
retrieval in the search space of the facial images by integrating content-based image retrieval (CBIR) techniques and face
recognition techniques, with the semantic description of the facial image. The aim is to reduce the semantic gap
3. between high level query requirement and low level facial features of the human face image such that the system can
be ready to meet human nature way and needs in description and retrieval of facial image.
System Configuration:-
H/W System Configuration:-
Processor - Pentium –III
Speed - 1.1 Ghz
RAM - 256 MB(min)
Hard Disk - 20 GB
4. Floppy Drive - 1.44 MB
Key Board - Standard Windows Keyboard
Mouse - Two or Three Button Mouse
Monitor - SVGA
S/W System Configuration:-
Operating System :Windows95/98/2000/XP
Application Server : Tomcat5.0/6.X
Front End : HTML, Java, Jsp
Scripts : JavaScript.
Server side Script : Java Server Pages.
Database : Mysql
Database Connectivity : JDBC.
CONCLUSION
We propose and combine two orthogonal methods to utilize automatically detected human attributes to
significantly improve content-based face image retrieval. To the best of our knowledge, this is the first proposal of
combining low-level features and automatically detected human attributes for content-based face image retrieval.
Attribute-enhanced sparse coding exploits the global structure and uses several human attributes to construct semantic-
aware code words in the offline stage. Attribute-embedded inverted indexing further considers the local attribute
signature of the query image and still ensures efficient retrieval in the online stage. The experimental results show that
5. using the code words generated by the proposed coding scheme, we can reduce the quantization error and achieve
salient gains in face retrieval on two public datasets; the proposed indexing scheme can be easily integrated into
inverted index, thus maintaining a scalable framework. During the experiments, we also discover certain informative
attributes for face retrieval across different datasets and these attributes are also promising for other applications.
Current methods treat all attributes as equal. We will investigate methods to dynamically decide the importance of the
attributes and further exploit the contextual relationships between them.