JPD1436 Web Image Re-Ranking Using Query-Specific Semantic Signatureschennaijp
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User profiling is a fundamental component of any personalization applications. Most existing user profiling strategies are based on objects that users are interested in (i.e., positive preferences), but not the objects that users dislike (i.e., negative preferences). In this paper, we focus on search engine personalization and develop several concept-based user profiling methods that are based on both positive and negative preferences. We evaluate the proposed methods against our previously proposed personalized query clustering method. Experimental results show that profiles which capture and utilize both of the user’s positive and negative preferences perform the best. An important result from the experiments is that profiles with negative preferences can increase the separation between similar and dissimilar queries. The separation provides a clear threshold for an agglomerative clustering algorithm to terminate and improve the overall quality of the resulting query clusters.
JPD1437 Click Prediction for Web Image Reranking Using Multimodal Sparse Codingchennaijp
We have best 2014 free dot not projects topics are available along with all document, you can easy to find out number of documents for various projects titles.
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This document summarizes a presentation about developing a search engine for the city of Ratlam. It introduces the need for a search engine to provide information to students, businessmen and others interested in the city. The analysis section includes a use case diagram. The design section includes a class diagram. Implementation details include the technologies used like .NET and SQL Server. Testing methods like white box and black box testing are also discussed. Screenshots of the home page, login page and contact page are included.
This document proposes a content-based image search engine that can retrieve relevant images from a large database based on a user-input query image. It discusses how content-based image retrieval systems work by extracting visual features like color, texture and shape from images. The proposed search engine would detect faces in input images using OpenCV and compare visual features to find matching images in the database. It would then retrieve and display the related information and images to the user. The goal is to build a more accurate image search compared to traditional text-based search engines by analyzing visual content of images.
The GAO report assessed the progress of 7 federal agencies in implementing the federal "Cloud First" policy. The agencies have made progress by incorporating cloud requirements into policies and processes and meeting deadlines to identify and implement cloud services. However, 2 agencies may not meet the June 2012 deadline and agency plans were missing key elements like estimated costs. The report also identified 7 common challenges agencies faced in implementing cloud computing, such as meeting security requirements and obtaining guidance. It concludes better upfront planning is needed for future cloud efforts to fully realize expected benefits of improved efficiencies and reduced costs.
The document discusses several initiatives related to cloud computing, open data, and semantic technologies in the federal government. It outlines the White House's cloud computing initiative through Apps.gov to help agencies quickly purchase cloud services. It also discusses the evolution of the federal enterprise architecture to incorporate semantic interoperability patterns and open linked data. Finally, it notes that Data.gov plans to provide guidance to help agencies semantically mark up their datasets so they can be better leveraged.
The document describes a Semantic Post-It system that maps personal messages into an organized personal information space using ontologies and collective intelligence from sources like Wikipedia. It allows users to edit personal ontologies on their mobile devices and view relevant information extracted from messages in graph and table formats. Technologies discussed that enable the system include ontology construction from text and Wikipedia, information extraction using ontologies, and reducing the cost of ontology development and annotation.
The document discusses how semantic navigation can help improve search experiences on websites. It notes that search engines often struggle with vague keywords and must balance precision and recall. Semantic data can help drive site navigation, identify entities to use as search facets, smooth differences in categories and tags, and understand user context. Using semantic navigation can improve SEO, time spent on sites, and conversion rates. It provides an example of one company that saw a 22% increase in search usage, 25% more time spent, and greater drilling down after implementing semantic navigation technologies.
Semantic Technologies for Enterprise Cloud ManagementPeter Haase
This document discusses managing enterprise clouds through semantic technologies. It presents a vision of fully automated data center management from a single intuitive console. Key challenges include integrating heterogeneous IT resource data and enabling collaborative documentation. The proposed solution applies a semantic data model, wiki for documentation, and a flexible living user interface. Widgets, search, and visual analytics tools provide tailored access and insights. Experience shows semantic technologies scale well and the approach is highly reusable across domains.
The document discusses the challenges of scale and complexity in modern systems and how semantic technologies can help provide governance. It proposes using a semantic governance repository with services, policies, taxonomies, and machine learning to classify and search services. Event processing and business rules would monitor for situations while semantic search allows discovery. The goal is an open source platform leveraging existing components to enable semantic intelligence for cloud enterprises.
The document discusses cloud economics and cost modeling. It notes that while cloud is often viewed as pay-as-you-go, the reality is that customers pay for what they provision, not just what they use. Utilization rates for physical, virtualized, and cloud infrastructure are typically around 30%, meaning costs can be optimized through rightsizing capacity. Myths around cloud being cheap, easier to migrate to, and fully managed are debunked. Resources for understanding cloud costs and models are provided.
The document discusses automated planning and its applications. It provides examples of planning systems used for space exploration missions, games, manufacturing, and cloud computing. Hierarchical planning is described as an approach that provides a hierarchy of actions and goals to guide the planning process. The case study focuses on using Elastra Enterprise Cloud Server to automatically configure, deploy, and scale applications across hybrid cloud environments through hierarchical planning and orchestration.
Presented by Roberto Masiero, Vice President ADP Innovation Lab, ADP
In this presentation we will cover ADP's Semantic Search strategy and implementation. From the use cases to the design to support semantic searches on a vast set of data, to crawling data from hundreds of data sources. We will also cover our architecture to scale the search service on a multi-tenant SaaS environment.
IoT Day 2016: Cloud Services for IoT Semantic InteroperabilityMark Underwood
Presentation made on IoT Day 2016 about the importance of API-first, cloud services role in implementing ontologies for IoT. The use case is homely: providing proper humidity to my electric violin and guitar instruments while in their cases.
Cloud IT Economics: What you don't know about TCO can hurt youAl Brodie
An e-book that explores factors beyond basic price that impact the true cost of ownership for cloud implementations by comparing and contrasting prevalent approaches, using common enterprise workloads, from three prominent cloud service providers.
Introduction to Enterprise Cloud EconomicsEverest Group
Everest Group experts will disucss the transformational impact emerging cloud models can have on IT cost and performance in the enterprise. This webinar will focus on the specific enterprise benefits of cloud infrastructure services, including compute, storage and networking.
Opinion Mining and Sentiment Analysis Issues and Challenges Jaganadh Gopinadhan
This document discusses opinion mining and sentiment analysis. It begins with an introduction to the topic, explaining how people use blogs, forums and social media to share opinions. It then defines sentiment analysis as the automated extraction of subjective content and predicting sentiment from digital text. The document outlines the key components of sentiment analysis, including subjectivity, opinion definition and the components that are analyzed. It also discusses some common approaches to sentiment analysis and some of the main challenges, such as dealing with language, domain specificity, spam and named entity identification.
SEMANTIC INFORMATION EXTRACTION IN UNIVERSITY DOMAINcscpconf
Today’s conventional search engines hardly do provide the essential content relevant to the
user’s search query. This is because the context and semantics of the request made by the user
is not analyzed to the full extent. So here the need for a semantic web search arises. SWS is
upcoming in the area of web search which combines Natural Language Processing and
Artificial Intelligence.
The objective of the work done here is to design, develop and implement a semantic search
engine- SIEU(Semantic Information Extraction in University Domain) confined to the
university domain. SIEU uses ontology as a knowledge base for the information retrieval
process. It is not just a mere keyword search. It is one layer above what Google or any other
search engines retrieve by analyzing just the keywords. Here the query is analyzed both
syntactically and semantically.
The developed system retrieves the web results more relevant to the user query through keyword
expansion. The results obtained here will be accurate enough to satisfy the request made by the
user. The level of accuracy will be enhanced since the query is analyzed semantically. The
system will be of great use to the developers and researchers who work on web. The Google results are re-ranked and optimized for providing the relevant links. For ranking an algorithm has been applied which fetches more apt results for the user query
IRJET- Hybrid Recommendation System for MoviesIRJET Journal
This document describes a hybrid recommendation system for movies that combines collaborative and content-based filtering. It uses the MovieLens rating dataset and supplements it with additional data from IMDB, such as movie details. Algorithms like nearest neighbors collaborative filtering and content-based filtering are used to provide personalized movie recommendations to users. The system architecture and design are outlined, including user profiles, movie searching, and success prediction for upcoming movies. An evaluation of the system demonstrates how additional content features can improve recommendation accuracy over collaborative filtering alone.
ENHANCED WEB IMAGE RE-RANKING USING SEMANTIC SIGNATURESIAEME Publication
Several commercial search engines adopt Image re- ranking approach to enhance the quality of results for web based image search .When an user issues a query keyword, the search engine first selects a group of images based on textual information. If the user selects a query image from the retrieved group, the rest of the images are re-ranked based on their visual similarities with the query image. The images with similar visual features cannot be correlated. Also learning a universal visual semantic space which depicts the characteristics of images which are highly different to each other is a tedious task.
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.
Enhanced Web Usage Mining Using Fuzzy Clustering and Collaborative Filtering ...inventionjournals
This document discusses an enhanced web usage mining system using fuzzy clustering and collaborative filtering recommendation algorithms. It aims to address challenges with existing recommender systems like producing low quality recommendations for large datasets. The system architecture uses fuzzy clustering to predict future user access based on browsing behavior. Collaborative filtering is then used to produce expected results by combining fuzzy clustering outputs with a web database. This approach aims to provide users with more relevant recommendations in a shorter time compared to other systems.
The document describes a system called UProRevs that aims to personalize web search results based on the user's profile and interests. It does this by taking the results from a normal search engine, calculating the relevance of each result to the user's profile, and displaying the results along with this relevance score. The system generates user profiles based on information provided during registration and updates them over time based on the user's feedback on search results. It calculates relevance by comparing keywords from the user profile and web page, and weighting them based on their ranks in each profile. The goal is to provide more useful search results tailored to each individual user's perspective.
The document discusses several initiatives related to cloud computing, open data, and semantic technologies in the federal government. It outlines the White House's cloud computing initiative through Apps.gov to help agencies quickly purchase cloud services. It also discusses the evolution of the federal enterprise architecture to incorporate semantic interoperability patterns and open linked data. Finally, it notes that Data.gov plans to provide guidance to help agencies semantically mark up their datasets so they can be better leveraged.
The document describes a Semantic Post-It system that maps personal messages into an organized personal information space using ontologies and collective intelligence from sources like Wikipedia. It allows users to edit personal ontologies on their mobile devices and view relevant information extracted from messages in graph and table formats. Technologies discussed that enable the system include ontology construction from text and Wikipedia, information extraction using ontologies, and reducing the cost of ontology development and annotation.
The document discusses how semantic navigation can help improve search experiences on websites. It notes that search engines often struggle with vague keywords and must balance precision and recall. Semantic data can help drive site navigation, identify entities to use as search facets, smooth differences in categories and tags, and understand user context. Using semantic navigation can improve SEO, time spent on sites, and conversion rates. It provides an example of one company that saw a 22% increase in search usage, 25% more time spent, and greater drilling down after implementing semantic navigation technologies.
Semantic Technologies for Enterprise Cloud ManagementPeter Haase
This document discusses managing enterprise clouds through semantic technologies. It presents a vision of fully automated data center management from a single intuitive console. Key challenges include integrating heterogeneous IT resource data and enabling collaborative documentation. The proposed solution applies a semantic data model, wiki for documentation, and a flexible living user interface. Widgets, search, and visual analytics tools provide tailored access and insights. Experience shows semantic technologies scale well and the approach is highly reusable across domains.
The document discusses the challenges of scale and complexity in modern systems and how semantic technologies can help provide governance. It proposes using a semantic governance repository with services, policies, taxonomies, and machine learning to classify and search services. Event processing and business rules would monitor for situations while semantic search allows discovery. The goal is an open source platform leveraging existing components to enable semantic intelligence for cloud enterprises.
The document discusses cloud economics and cost modeling. It notes that while cloud is often viewed as pay-as-you-go, the reality is that customers pay for what they provision, not just what they use. Utilization rates for physical, virtualized, and cloud infrastructure are typically around 30%, meaning costs can be optimized through rightsizing capacity. Myths around cloud being cheap, easier to migrate to, and fully managed are debunked. Resources for understanding cloud costs and models are provided.
The document discusses automated planning and its applications. It provides examples of planning systems used for space exploration missions, games, manufacturing, and cloud computing. Hierarchical planning is described as an approach that provides a hierarchy of actions and goals to guide the planning process. The case study focuses on using Elastra Enterprise Cloud Server to automatically configure, deploy, and scale applications across hybrid cloud environments through hierarchical planning and orchestration.
Presented by Roberto Masiero, Vice President ADP Innovation Lab, ADP
In this presentation we will cover ADP's Semantic Search strategy and implementation. From the use cases to the design to support semantic searches on a vast set of data, to crawling data from hundreds of data sources. We will also cover our architecture to scale the search service on a multi-tenant SaaS environment.
IoT Day 2016: Cloud Services for IoT Semantic InteroperabilityMark Underwood
Presentation made on IoT Day 2016 about the importance of API-first, cloud services role in implementing ontologies for IoT. The use case is homely: providing proper humidity to my electric violin and guitar instruments while in their cases.
Cloud IT Economics: What you don't know about TCO can hurt youAl Brodie
An e-book that explores factors beyond basic price that impact the true cost of ownership for cloud implementations by comparing and contrasting prevalent approaches, using common enterprise workloads, from three prominent cloud service providers.
Introduction to Enterprise Cloud EconomicsEverest Group
Everest Group experts will disucss the transformational impact emerging cloud models can have on IT cost and performance in the enterprise. This webinar will focus on the specific enterprise benefits of cloud infrastructure services, including compute, storage and networking.
Opinion Mining and Sentiment Analysis Issues and Challenges Jaganadh Gopinadhan
This document discusses opinion mining and sentiment analysis. It begins with an introduction to the topic, explaining how people use blogs, forums and social media to share opinions. It then defines sentiment analysis as the automated extraction of subjective content and predicting sentiment from digital text. The document outlines the key components of sentiment analysis, including subjectivity, opinion definition and the components that are analyzed. It also discusses some common approaches to sentiment analysis and some of the main challenges, such as dealing with language, domain specificity, spam and named entity identification.
SEMANTIC INFORMATION EXTRACTION IN UNIVERSITY DOMAINcscpconf
Today’s conventional search engines hardly do provide the essential content relevant to the
user’s search query. This is because the context and semantics of the request made by the user
is not analyzed to the full extent. So here the need for a semantic web search arises. SWS is
upcoming in the area of web search which combines Natural Language Processing and
Artificial Intelligence.
The objective of the work done here is to design, develop and implement a semantic search
engine- SIEU(Semantic Information Extraction in University Domain) confined to the
university domain. SIEU uses ontology as a knowledge base for the information retrieval
process. It is not just a mere keyword search. It is one layer above what Google or any other
search engines retrieve by analyzing just the keywords. Here the query is analyzed both
syntactically and semantically.
The developed system retrieves the web results more relevant to the user query through keyword
expansion. The results obtained here will be accurate enough to satisfy the request made by the
user. The level of accuracy will be enhanced since the query is analyzed semantically. The
system will be of great use to the developers and researchers who work on web. The Google results are re-ranked and optimized for providing the relevant links. For ranking an algorithm has been applied which fetches more apt results for the user query
IRJET- Hybrid Recommendation System for MoviesIRJET Journal
This document describes a hybrid recommendation system for movies that combines collaborative and content-based filtering. It uses the MovieLens rating dataset and supplements it with additional data from IMDB, such as movie details. Algorithms like nearest neighbors collaborative filtering and content-based filtering are used to provide personalized movie recommendations to users. The system architecture and design are outlined, including user profiles, movie searching, and success prediction for upcoming movies. An evaluation of the system demonstrates how additional content features can improve recommendation accuracy over collaborative filtering alone.
ENHANCED WEB IMAGE RE-RANKING USING SEMANTIC SIGNATURESIAEME Publication
Several commercial search engines adopt Image re- ranking approach to enhance the quality of results for web based image search .When an user issues a query keyword, the search engine first selects a group of images based on textual information. If the user selects a query image from the retrieved group, the rest of the images are re-ranked based on their visual similarities with the query image. The images with similar visual features cannot be correlated. Also learning a universal visual semantic space which depicts the characteristics of images which are highly different to each other is a tedious task.
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.
Enhanced Web Usage Mining Using Fuzzy Clustering and Collaborative Filtering ...inventionjournals
This document discusses an enhanced web usage mining system using fuzzy clustering and collaborative filtering recommendation algorithms. It aims to address challenges with existing recommender systems like producing low quality recommendations for large datasets. The system architecture uses fuzzy clustering to predict future user access based on browsing behavior. Collaborative filtering is then used to produce expected results by combining fuzzy clustering outputs with a web database. This approach aims to provide users with more relevant recommendations in a shorter time compared to other systems.
The document describes a system called UProRevs that aims to personalize web search results based on the user's profile and interests. It does this by taking the results from a normal search engine, calculating the relevance of each result to the user's profile, and displaying the results along with this relevance score. The system generates user profiles based on information provided during registration and updates them over time based on the user's feedback on search results. It calculates relevance by comparing keywords from the user profile and web page, and weighting them based on their ranks in each profile. The goal is to provide more useful search results tailored to each individual user's perspective.
This document discusses a proposed search engine optimization (SEO) system. It includes an abstract describing SEO and its goals. The scope section discusses how SEO is commonly used to improve search engine rankings. The proposed system would allow users to search for content by keyword and refine results. It would display search results across different formats. The system requirements, design, testing approach, and screenshots are also outlined. In conclusion, the document states that SEO is an ongoing process that requires constant adaptation to changes in technology and search engine algorithms.
The document describes VIRLab, a web-based virtual lab for experimenting with information retrieval models. It allows users to easily implement retrieval functions, configure search engines to test different retrieval models, and compare the performance of retrieval functions on leaderboards to see how their model ranks against others. The goal is to facilitate the process of developing and evaluating new IR models for both teaching and research purposes.
The document describes a proposed framework for a metacrawler that retrieves and ranks web documents from multiple search engines based on user queries. The metacrawler fetches results from different search engines in parallel using a web crawler. It eliminates duplicate URLs and ranks the pages using an improved PageRank algorithm to reduce topic drift. The ranked results are then clustered to group similar pages to help users easily find relevant information. An evaluation of the metacrawler shows it achieves better retrieval effectiveness and relevance ratios compared to individual search engines.
The document describes a proposed framework for a metacrawler that retrieves and ranks web documents from multiple search engines based on user queries. The metacrawler fetches results from different search engines in parallel using a web crawler. It then applies a modified PageRank algorithm to rank the results based on relevance to the topic and reduces topic drift. Finally, it clusters the search results to group related pages together to help users easily find relevant information. Experimental results showed the metacrawler had better retrieval effectiveness and relevance ratios compared to individual search engines like Google, Yahoo and AltaVista.
Search engines use spiders or robots to survey the web and build databases of web documents. They allow users to search for keywords and return relevant pages. There are three main types of search engines - crawler-based, directory-based, and hybrid. Google is an example of a popular hybrid search engine that uses both crawlers and human editors. Search engine optimization (SEO) is important for increasing traffic to websites through organic search results. The future of search relies increasingly on data science, machine learning, and artificial intelligence.
Image Based Information Retrieval Using Deep Learning and Clustering TechniquesIRJET Journal
This document summarizes an approach for image-based information retrieval using deep learning and clustering techniques. It begins by discussing how current search engines rely on text-based methods that cannot fully capture image content. The proposed approach uses deep learning to extract visual features from images and hierarchical clustering to organize similar images. Images are initially retrieved based on text queries, then re-ranked based on visual relevance scores to return only images truly relevant to the user's query. The approach was found to reduce the semantic gap between low-level image features and high-level semantics compared to traditional text-based search.
Image Based Information Retrieval Using Deep Learning and Clustering TechniquesIRJET Journal
This document summarizes an approach for image-based information retrieval using deep learning and clustering techniques. It begins by discussing how current search engines rely on text-based approaches that have limitations. The proposed approach uses deep learning to extract visual features from images and hierarchical clustering to organize similar images. Images are initially retrieved based on a user query, then re-ranked based on computed relevance scores to return more relevant results. The approach was found to reduce the semantic gap compared to text-based methods by leveraging visual features from images.
This document describes a proposed content-based image retrieval system that uses histogram values and user feedback to effectively search and rank image search results. The proposed system tracks user navigation patterns and stores user feedback information separately from image data to improve search performance. Images are ranked based on their histogram values, user feedback, text metadata, and number of clicks to better capture user intent than existing keyword-based search systems. This approach aims to address challenges with existing CBIR systems such as helping users refine image queries and reducing information overload through improved query understanding and result ranking.
IRJET- Sentimental Prediction of Users Perspective through Live Streaming : T...IRJET Journal
This document proposes a system to analyze sentiment from live streaming text and videos on websites like Twitter and YouTube. It uses an algorithm that calculates sentiment scores for words and sentences and classifies them as positive or negative. The system accesses streaming data through API keys and performs sentiment analysis on both text and videos to improve accuracy. It stores the results in a MongoDB database for future reference. The goal is to help users analyze sentiment toward any search keyword from streaming data in real-time.
Web crawler with email extractor and image extractorAbhinav Gupta
This document describes a web crawler, email extractor, and image extractor program created by Abhinav Gupta, Nitish Parikh, and Rishabh Singh. It discusses how each component works, including that a web crawler starts with seed URLs and recursively extracts links, an email extractor finds emails on websites through various methods, and an image extractor locates images in a database using features like color histograms. The document also provides screenshots and discusses limitations, findings, conclusions, and possibilities for future work.
This document describes a proposed system for enabling effective yet privacy-preserving fuzzy keyword search in cloud computing. It formalizes the problem of fuzzy keyword search over encrypted cloud data for the first time. The system uses edit distance to quantify keyword similarity and develops two techniques - wildcard-based and gram-based - to construct efficient fuzzy keyword sets. It then proposes a symbol-based trie-traverse searching scheme to match keywords and retrieve files. Security analysis shows the solution preserves privacy while allowing fuzzy searches.
IEEE 2014 DOTNET CLOUD COMPUTING PROJECTS A scientometric analysis of cloud c...IEEEMEMTECHSTUDENTPROJECTS
This document discusses a proposed system for improving the process of clustering and displaying search results from literature on cloud computing. The existing system has problems with only displaying results from registered candidates, poor data display, and lack of security. The proposed system aims to display the highest ranking search keywords based on user and publisher rankings to make the process more secure. It uses clustering to automatically organize documents by topic to improve information retrieval. The system would have administrative, publisher, search, and user modules and use ASP.Net and SQL Server software.
IEEE 2014 DOTNET NETWORKING PROJECTS A proximity aware interest-clustered p2p...IEEEMEMTECHSTUDENTPROJECTS
This document describes a proposed proximity-aware and interest-clustered peer-to-peer (P2P) file sharing system (PAIS) that forms physically close nodes into clusters and further groups nodes with common interests into subclusters. It aims to improve file searching efficiency by creating replicas of frequently requested files within subclusters. The system analyzes user interests and file sharing behaviors to construct the network topology and uses an intelligent file replication algorithm. The experimental results show this approach improves file searching performance compared to existing P2P systems.
☁️ GDG Cloud Munich: Build With AI Workshop - Introduction to Vertex AI! ☁️
Join us for an exciting #BuildWithAi workshop on the 28th of April, 2025 at the Google Office in Munich!
Dive into the world of AI with our "Introduction to Vertex AI" session, presented by Google Cloud expert Randy Gupta.
Analysis of reinforced concrete deep beam is based on simplified approximate method due to the complexity of the exact analysis. The complexity is due to a number of parameters affecting its response. To evaluate some of this parameters, finite element study of the structural behavior of the reinforced self-compacting concrete deep beam was carried out using Abaqus finite element modeling tool. The model was validated against experimental data from the literature. The parametric effects of varied concrete compressive strength, vertical web reinforcement ratio and horizontal web reinforcement ratio on the beam were tested on eight (8) different specimens under four points loads. The results of the validation work showed good agreement with the experimental studies. The parametric study revealed that the concrete compressive strength most significantly influenced the specimens’ response with the average of 41.1% and 49 % increment in the diagonal cracking and ultimate load respectively due to doubling of concrete compressive strength. Although the increase in horizontal web reinforcement ratio from 0.31 % to 0.63 % lead to average of 6.24 % increment on the diagonal cracking load, it does not influence the ultimate strength and the load-deflection response of the beams. Similar variation in vertical web reinforcement ratio leads to an average of 2.4 % and 15 % increment in cracking and ultimate load respectively with no appreciable effect on the load-deflection response.
Lidar for Autonomous Driving, LiDAR Mapping for Driverless Cars.pptxRishavKumar530754
LiDAR-Based System for Autonomous Cars
Autonomous Driving with LiDAR Tech
LiDAR Integration in Self-Driving Cars
Self-Driving Vehicles Using LiDAR
LiDAR Mapping for Driverless Cars
Fluid mechanics is the branch of physics concerned with the mechanics of fluids (liquids, gases, and plasmas) and the forces on them. Originally applied to water (hydromechanics), it found applications in a wide range of disciplines, including mechanical, aerospace, civil, chemical, and biomedical engineering, as well as geophysics, oceanography, meteorology, astrophysics, and biology.
It can be divided into fluid statics, the study of various fluids at rest, and fluid dynamics.
Fluid statics, also known as hydrostatics, is the study of fluids at rest, specifically when there's no relative motion between fluid particles. It focuses on the conditions under which fluids are in stable equilibrium and doesn't involve fluid motion.
Fluid kinematics is the branch of fluid mechanics that focuses on describing and analyzing the motion of fluids, such as liquids and gases, without considering the forces that cause the motion. It deals with the geometrical and temporal aspects of fluid flow, including velocity and acceleration. Fluid dynamics, on the other hand, considers the forces acting on the fluid.
Fluid dynamics is the study of the effect of forces on fluid motion. It is a branch of continuum mechanics, a subject which models matter without using the information that it is made out of atoms; that is, it models matter from a macroscopic viewpoint rather than from microscopic.
Fluid mechanics, especially fluid dynamics, is an active field of research, typically mathematically complex. Many problems are partly or wholly unsolved and are best addressed by numerical methods, typically using computers. A modern discipline, called computational fluid dynamics (CFD), is devoted to this approach. Particle image velocimetry, an experimental method for visualizing and analyzing fluid flow, also takes advantage of the highly visual nature of fluid flow.
Fundamentally, every fluid mechanical system is assumed to obey the basic laws :
Conservation of mass
Conservation of energy
Conservation of momentum
The continuum assumption
For example, the assumption that mass is conserved means that for any fixed control volume (for example, a spherical volume)—enclosed by a control surface—the rate of change of the mass contained in that volume is equal to the rate at which mass is passing through the surface from outside to inside, minus the rate at which mass is passing from inside to outside. This can be expressed as an equation in integral form over the control volume.
The continuum assumption is an idealization of continuum mechanics under which fluids can be treated as continuous, even though, on a microscopic scale, they are composed of molecules. Under the continuum assumption, macroscopic (observed/measurable) properties such as density, pressure, temperature, and bulk velocity are taken to be well-defined at "infinitesimal" volume elements—small in comparison to the characteristic length scale of the system, but large in comparison to molecular length scale
Concept of Problem Solving, Introduction to Algorithms, Characteristics of Algorithms, Introduction to Data Structure, Data Structure Classification (Linear and Non-linear, Static and Dynamic, Persistent and Ephemeral data structures), Time complexity and Space complexity, Asymptotic Notation - The Big-O, Omega and Theta notation, Algorithmic upper bounds, lower bounds, Best, Worst and Average case analysis of an Algorithm, Abstract Data Types (ADT)
The Fluke 925 is a vane anemometer, a handheld device designed to measure wind speed, air flow (volume), and temperature. It features a separate sensor and display unit, allowing greater flexibility and ease of use in tight or hard-to-reach spaces. The Fluke 925 is particularly suitable for HVAC (heating, ventilation, and air conditioning) maintenance in both residential and commercial buildings, offering a durable and cost-effective solution for routine airflow diagnostics.
The role of the lexical analyzer
Specification of tokens
Finite state machines
From a regular expressions to an NFA
Convert NFA to DFA
Transforming grammars and regular expressions
Transforming automata to grammars
Language for specifying lexical analyzers
Data Structures_Linear data structures Linked Lists.pptxRushaliDeshmukh2
Concept of Linear Data Structures, Array as an ADT, Merging of two arrays, Storage
Representation, Linear list – singly linked list implementation, insertion, deletion and searching operations on linear list, circularly linked lists- Operations for Circularly linked lists, doubly linked
list implementation, insertion, deletion and searching operations, applications of linked lists.
Raish Khanji GTU 8th sem Internship Report.pdfRaishKhanji
This report details the practical experiences gained during an internship at Indo German Tool
Room, Ahmedabad. The internship provided hands-on training in various manufacturing technologies, encompassing both conventional and advanced techniques. Significant emphasis was placed on machining processes, including operation and fundamental
understanding of lathe and milling machines. Furthermore, the internship incorporated
modern welding technology, notably through the application of an Augmented Reality (AR)
simulator, offering a safe and effective environment for skill development. Exposure to
industrial automation was achieved through practical exercises in Programmable Logic Controllers (PLCs) using Siemens TIA software and direct operation of industrial robots
utilizing teach pendants. The principles and practical aspects of Computer Numerical Control
(CNC) technology were also explored. Complementing these manufacturing processes, the
internship included extensive application of SolidWorks software for design and modeling tasks. This comprehensive practical training has provided a foundational understanding of
key aspects of modern manufacturing and design, enhancing the technical proficiency and readiness for future engineering endeavors.
IEEE 2014 DOTNET CLOUD COMPUTING PROJECTS Web image re ranking using query-specific semantic signatures
1. GLOBALSOFT TECHNOLOGIES
IEEE PROJECTS & SOFTWARE DEVELOPMENTS
IEEE FINAL YEAR PROJECTS|IEEE ENGINEERING PROJECTS|IEEE STUDENTS PROJECTS|IEEE
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Web Image Re-Ranking Using Query-Specific Semantic
Signatures
ABSTRACT
Image re-ranking, as an effective way to improve the results of web-based
image search, has been adopted by current commercial search engines. Given a
query keyword, a pool of images is first retrieved by the search engine based on
textual information. By asking the user to select a query image from the pool, the
remaining images are re-ranked based on their visual similarities with the query
image. A major challenge is that the similarities of visual features do not well
correlate with images’ semantic meanings which interpret users’ search intention.
On the other hand, learning a universal visual semantic space to characterize highly
diverse images from the web is difficult and ineffic ient. In this paper, we propose a
2. novel image re-ranking framework, which automatically offline learns different
visual semantic spaces for different query keywords through keyword expansions.
The visual features of images are projected into their related visual semantic spaces
to get semantic signatures. At the online stage, images are re-ranked by comparing
their semantic signatures obtained from the visual semantic space specified by the
query keyword. The new approach significantly improves both the accuracy and
efficiency of image re-ranking. The original visual features of thousands of
dimensions can be projected to the semantic signatures as short as 25 dimensions.
Experimental results show that 20% 35% relative improvement has been achieved
on re-ranking precisions compared with the stateof-the art methods.
SYSTEM ANALYSIS
Existing System:
This is the most common form of text search on the Web. Most search
engines do their text query and retrieval using keywords. The keywords based
searches they usually provide results from blogs or other discussion boards. The
user cannot have a satisfaction with these results due to lack of trusts on blogs etc.
low precision and high recall rate. In early search engine that offered
disambiguation to search terms. User intention identification plays an important
role in the intelligent semantic search engine.
Proposed System:
3. We propose the semantic web based search engine which is also called as
Intelligent Semantic Web Search Engines. We use the power of xml meta-tags
deployed on the web page to search the queried information. The xml page will be
consisted of built-in and user defined tags. Here propose the intelligent semantic
web based search engine. We use the power of xml meta-tags deployed on the web
page to search the queried information. The xml page will be consisted of built-in
and user defined tags. The metadata information of the pages is extracted from this
xml into rdf. our practical results showing that proposed approach taking very less
time to answer the queries while providing more accurate information.
MODULE DESCRIPTION
1. Information retrieval.
2. Search engine.
1. Information retrieval.
Information retrieval by searching information on the web is not a fresh idea
but has different challenges when it is compared to general information retrieval.
Different search engines return different search results due to the variation in
indexing and search process.
2. Search engine.
Our search engine first searches the pages and then gets the result searching
for the metadata to get the trusted results search engines require searching for
pages that maintain such information at some place. Here propose the intelligent
4. semantic web based search engine. we use the power of xml meta-tags deployed on
the web page to search the queried information. the xml page will be consisted of
built-in and user defined tags our practical results showing that proposed approach
taking very less time to answer the queries while providing more accurate
information.
SYSTEM SPECIFICATION
Hardware Requirements
• System : Pentium IV 2.4 GHz.
• Hard Disk : 80 GB.
• Floppy Drive : 1.44 Mb.
• Monitor : 15’ VGA Colour.
• Mouse : Optical Mouse
• RAM : 512 MB.
Software Requirements:
• Operating system : Windows XP.
• Coding Language : ASP.Net with C#
• Data Base : SQL Server 2005
CONCLUSION
5. We propose a novel image re-ranking framework, which learns query-specific
semantic spaces to significantly improve the effectiveness and efficiency
of online image reranking. The visual features of images are projected into their
related visual semantic spaces automatically learned through keyword expansions
at the offline stage. The extracted semantic signatures can be 70 times shorter than
the original visual feature on average, while achieve 20%35% relative
improvement on re-ranking precisions over state-ofthe-art methods.