Machine Learning Strategies for Content Based Image Retrieval

Machine Learning Strategies for Content Based Image Retrieval PDF Author:
Publisher:
ISBN:
Category :
Languages : en
Pages :

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Book Description
The ever increasing amount of digital information has created a need for effective information retrieval systems. As it is said, information which cannot be found easily is as good as lost. As information comes in various formats and types, their retrieval mechanisms also need to differ correspondingly. In this work, we deal with the task of content based image retrieval, in which the system facilitates the interaction between a user and an image database by automatic analysis of the image content. We know about the ambiguities that can exist even in the simplest of phrases in a natural language. As an example, a sentence such as "Flying planes can be dangerous" can either mean "Flying planes are dangerous" or "Flying planes is dangerous". Images are no different. In fact, the old saying "A picture is worth a thousand words" is as true here as it is anywhere. In this work, we take the view that these ambiguities are natural, and thus the system should not take the one or the other viewpoint from the very beginning. The earliest systems for image retrieval allowed the user to specify his or her viewpoint by giving access to its internal system parameters, which can be complicated or tiring for the user. A modern system, on the other hand, seeks to learn this viewpoint by imposing less responsibilities on the user. This can be achieved using relevance feedback, in which the user progressively gives the system more and more information, in return for better results. Relevance feedback can be short-term, in which the data collected is discarded as soon as the session is over, and long-term, in which the data can be collected over multiple sessions of one user, or even over multiple users. In this work, however, we will constrain ourselves to short-term relevance feedback, as in our view the ambiguities or the multiple interpretations present in an image cannot be handled otherwise. The later part of the thesis delves into image search as an offshoot of the traditional t.

Machine Learning Strategies for Content Based Image Retrieval

Machine Learning Strategies for Content Based Image Retrieval PDF Author:
Publisher:
ISBN:
Category :
Languages : en
Pages :

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Book Description
The ever increasing amount of digital information has created a need for effective information retrieval systems. As it is said, information which cannot be found easily is as good as lost. As information comes in various formats and types, their retrieval mechanisms also need to differ correspondingly. In this work, we deal with the task of content based image retrieval, in which the system facilitates the interaction between a user and an image database by automatic analysis of the image content. We know about the ambiguities that can exist even in the simplest of phrases in a natural language. As an example, a sentence such as "Flying planes can be dangerous" can either mean "Flying planes are dangerous" or "Flying planes is dangerous". Images are no different. In fact, the old saying "A picture is worth a thousand words" is as true here as it is anywhere. In this work, we take the view that these ambiguities are natural, and thus the system should not take the one or the other viewpoint from the very beginning. The earliest systems for image retrieval allowed the user to specify his or her viewpoint by giving access to its internal system parameters, which can be complicated or tiring for the user. A modern system, on the other hand, seeks to learn this viewpoint by imposing less responsibilities on the user. This can be achieved using relevance feedback, in which the user progressively gives the system more and more information, in return for better results. Relevance feedback can be short-term, in which the data collected is discarded as soon as the session is over, and long-term, in which the data can be collected over multiple sessions of one user, or even over multiple users. In this work, however, we will constrain ourselves to short-term relevance feedback, as in our view the ambiguities or the multiple interpretations present in an image cannot be handled otherwise. The later part of the thesis delves into image search as an offshoot of the traditional t.

Machine Learning Strategies for Content Based Image Retrieval

Machine Learning Strategies for Content Based Image Retrieval PDF Author: Lokesh Setia
Publisher:
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Category :
Languages : en
Pages :

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Proceedings of the International Conference on Frontiers of Intelligent Computing: Theory and Applications (FICTA) 2013

Proceedings of the International Conference on Frontiers of Intelligent Computing: Theory and Applications (FICTA) 2013 PDF Author: Suresh Chandra Satapathy
Publisher: Springer Science & Business Media
ISBN: 3319029312
Category : Technology & Engineering
Languages : en
Pages : 553

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Book Description
This volume contains the papers presented at the Second International Conference on Frontiers in Intelligent Computing: Theory and Applications (FICTA-2013) held during 14-16 November 2013 organized by Bhubaneswar Engineering College (BEC), Bhubaneswar, Odisha, India. It contains 63 papers focusing on application of intelligent techniques which includes evolutionary computation techniques like genetic algorithm, particle swarm optimization techniques, teaching-learning based optimization etc for various engineering applications such as data mining, Fuzzy systems, Machine Intelligence and ANN, Web technologies and Multimedia applications and Intelligent computing and Networking etc.

Artificial Intelligence for Maximizing Content Based Image Retrieval

Artificial Intelligence for Maximizing Content Based Image Retrieval PDF Author: Ma, Zongmin
Publisher: IGI Global
ISBN: 1605661759
Category : Computers
Languages : en
Pages : 450

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Book Description
Discusses major aspects of content-based image retrieval (CBIR) using current technologies and applications within the artificial intelligence (AI) field.

Machine Learning: ECML 2004

Machine Learning: ECML 2004 PDF Author: Jean-Francois Boulicaut
Publisher: Springer
ISBN: 3540301151
Category : Computers
Languages : en
Pages : 597

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Book Description
The proceedings of ECML/PKDD 2004 are published in two separate, albeit - tertwined,volumes:theProceedingsofthe 15thEuropeanConferenceonMac- ne Learning (LNAI 3201) and the Proceedings of the 8th European Conferences on Principles and Practice of Knowledge Discovery in Databases (LNAI 3202). The two conferences were co-located in Pisa, Tuscany, Italy during September 20–24, 2004. It was the fourth time in a row that ECML and PKDD were co-located. - ter the successful co-locations in Freiburg (2001), Helsinki (2002), and Cavtat- Dubrovnik (2003), it became clear that researchersstrongly supported the or- nization of a major scienti?c event about machine learning and data mining in Europe. We are happy to provide some statistics about the conferences. 581 di?erent papers were submitted to ECML/PKDD (about a 75% increase over 2003); 280 weresubmittedtoECML2004only,194weresubmittedtoPKDD2004only,and 107weresubmitted to both.Aroundhalfofthe authorsforsubmitted papersare from outside Europe, which is a clear indicator of the increasing attractiveness of ECML/PKDD. The Program Committee members were deeply involved in what turned out to be a highly competitive selection process. We assigned each paper to 3 - viewers, deciding on the appropriate PC for papers submitted to both ECML and PKDD. As a result, ECML PC members reviewed 312 papers and PKDD PC members reviewed 269 papers. We accepted for publication regular papers (45 for ECML 2004 and 39 for PKDD 2004) and short papers that were as- ciated with poster presentations (6 for ECML 2004 and 9 for PKDD 2004). The globalacceptance ratewas14.5%for regular papers(17% if we include the short papers).

A NOVEL TECHNIQUE FOR EFFECTIVE IMAGE GALLERY SEARCH USING CONTENT BASED IMAGE RETRIEVAL SYSTEM

A NOVEL TECHNIQUE FOR EFFECTIVE IMAGE GALLERY SEARCH USING CONTENT BASED IMAGE RETRIEVAL SYSTEM PDF Author: Dr.Raghavender K.V
Publisher: Archers & Elevators Publishing House
ISBN: 8119385306
Category : Antiques & Collectibles
Languages : en
Pages : 55

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Book Description


Content-based Image Retrieval Using Deep Learning

Content-based Image Retrieval Using Deep Learning PDF Author: Anshuman Vikram Singh
Publisher:
ISBN:
Category : Image processing
Languages : en
Pages : 68

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Book Description
"A content-based image retrieval (CBIR) system works on the low-level visual features of a user input query image, which makes it difficult for the users to formulate the query and also does not give satisfactory retrieval results. In the past image annotation was proposed as the best possible system for CBIR which works on the principle of automatically assigning keywords to images that help image retrieval users to query images based on these keywords. Image annotation is often regarded as the problem of image classification where images are represented by some low-level features an teh mapping between low-level features and high-level concepts (class labels) is done by supervised learning algorithms. In a CBIR system learning of effective feature representations and similarity measures is very important for the retrieval performance. Semantic gap has been the key challenge for this problem. A semantic gap exists between low-level image pixels captured by machines and the high-level semantics perceived by humans. The recent successes of deep learning techniques especially Convolutional Neural Networks (CNN) in solving computer vision applications has inspired me to work on this thesis so as to solve teh problem of CBIR using a dataset of annotated images."--Abstract.

Content-Based Image and Video Retrieval

Content-Based Image and Video Retrieval PDF Author: Oge Marques
Publisher: Springer Science & Business Media
ISBN: 1461509874
Category : Computers
Languages : en
Pages : 189

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Book Description
Content-Based Image And Video Retrieval addresses the basic concepts and techniques for designing content-based image and video retrieval systems. It also discusses a variety of design choices for the key components of these systems. This book gives a comprehensive survey of the content-based image retrieval systems, including several content-based video retrieval systems. The survey includes both research and commercial content-based retrieval systems. Content-Based Image And Video Retrieval includes pointers to two hundred representative bibliographic references on this field, ranging from survey papers to descriptions of recent work in the area, entire books and more than seventy websites. Finally, the book presents a detailed case study of designing MUSE–a content-based image retrieval system developed at Florida Atlantic University in Boca Raton, Florida.

Machine Learning and Statistical Modeling Approaches to Image Retrieval

Machine Learning and Statistical Modeling Approaches to Image Retrieval PDF Author: Yixin Chen
Publisher: Springer Science & Business Media
ISBN: 1402080352
Category : Science
Languages : en
Pages : 194

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Book Description
In the early 1990s, the establishment of the Internet brought forth a revolutionary viewpoint of information storage, distribution, and processing: the World Wide Web is becoming an enormous and expanding distributed digital library. Along with the development of the Web, image indexing and retrieval have grown into research areas sharing a vision of intelligent agents. Far beyond Web searching, image indexing and retrieval can potentially be applied to many other areas, including biomedicine, space science, biometric identification, digital libraries, the military, education, commerce, culture and entertainment. Machine Learning and Statistical Modeling Approaches to Image Retrieval describes several approaches of integrating machine learning and statistical modeling into an image retrieval and indexing system that demonstrates promising results. The topics of this book reflect authors' experiences of machine learning and statistical modeling based image indexing and retrieval. This book contains detailed references for further reading and research in this field as well.

AI Innovation in Medical Imaging Diagnostics

AI Innovation in Medical Imaging Diagnostics PDF Author: Anbarasan, Kalaivani
Publisher: IGI Global
ISBN: 1799830934
Category : Medical
Languages : en
Pages : 248

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Book Description
Recent advancements in the technology of medical imaging, such as CT and MRI scanners, are making it possible to create more detailed 3D and 4D images. These powerful images require vast amounts of digital data to help with the diagnosis of the patient. Artificial intelligence (AI) must play a vital role in supporting with the analysis of this medical imaging data, but it will only be viable as long as healthcare professionals and AI interact to embrace deep thinking platforms such as automation in the identification of diseases in patients. AI Innovation in Medical Imaging Diagnostics is an essential reference source that examines AI applications in medical imaging that can transform hospitals to become more efficient in the management of patient treatment plans through the production of faster imaging and the reduction of radiation dosages through the PET and SPECT imaging modalities. The book also explores how data clusters from these images can be translated into small data packages that can be accessed by healthcare departments to give a real-time insight into patient care and required interventions. Featuring research on topics such as assistive healthcare, cancer detection, and machine learning, this book is ideally designed for healthcare administrators, radiologists, data analysts, computer science professionals, medical imaging specialists, diagnosticians, medical professionals, researchers, and students.