Darmowa dostawa z usługą Inpost oraz Orlen od 299.00 zł
DPD 25.99 Poczta Polska 18.99 Paczkomat 13.99 ORLEN Paczka 10.99 InPost 13.99

Content-Based Video Retrieval

Język AngielskiAngielski
Książka Miękka
Książka Content-Based Video Retrieval Milan Petkovic
Kod Libristo: 01423683
Wydawnictwo Springer, Berlin, październik 2010
Recent advances in computing, communication, and data storage have led to an increasing number of la... Cały opis
? points 331 b
571.70
Dostępna u dostawcy w małych ilościach Wysyłamy za 14-18 dni

30 dni na zwrot towaru


Mogłoby Cię także zainteresować


Němčina pro jazykové školy nově 2 Věra Höppnerová / Miękka
common.buy 61.25
Codigo ELE María Ángeles Palomino / Miękka
common.buy 45.15
Čeladná Ladislav Juroš / Miękka
common.buy 9.81
Imagining the World into Existence Normandi Ellis / Miękka
common.buy 90.21
Pizza Pilgrims Thom Elliot / Twarda
common.buy 105.81
Healing Power of the Mind Rolf Alexander / Miękka
common.buy 60.95
Skin of Color Andrew F. Alexis / Twarda
common.buy 725.42
Life-sharing for a Creative Tomorrow Mary Rose Barral / Twarda
common.buy 277.34
Progress in Ultrafast Intense Laser Science Kaoru Yamanouchi / Twarda
common.buy 571.70
International and Comparative Business Leo McCann / Miękka
common.buy 175.47
Neurobiology of Actin Gianluca Gallo / Twarda
common.buy 879.03
Education for All and Multigrade Teaching Angela W. Little / Twarda
common.buy 704.25
Bloomsbury Companion to Jewish Studies Dean Phillip Bell / Twarda
common.buy 1 499.95

Recent advances in computing, communication, and data storage have led to an increasing number of large digital libraries publicly available on the Internet. In addition to alphanumeric data, other modalities, including video play an important role in these libraries. Ordinary techniques will not retrieve required information from the enormous mass of data stored in digital video libraries. Instead of words, a video retrieval system deals with collections of video records. Therefore, the system is confronted with the problem of video understanding. The system gathers key information from a video in order to allow users to query semantics instead of raw video data or video features. Users expect tools that automatically understand and manipulate the video content in the same structured way as a traditional database manages numeric and textual data. Consequently, content-based search and retrieval of video data becomes a challenging and important problem. This book focuses particularly on content-based video retrieval. After addressing basic concepts and techniques in the field, Content-Based Video Retrieval: A Database Perspective concentrates on the semantic gap problem, i.e., the problem of inferring semantics from raw video data, as the main problem of content-based video retrieval. This book identifies and proposes the integrated use of three different techniques to bridge the semantic gap, namely, spatio-temporal formalization methods, hidden Markov models, and dynamic Bayesian networks. As the problem is approached from a database perspective, the emphasis evolves from a database management system into a video database management system. This system allows a user to retrieve the desired video sequence among voluminous amounts of video data in an efficient and semantically meaningful way. This book also presents a modeling framework and a prototype of a content-based video management system that integrates the three methods and provides efficient, flexible, and scalable content-based video retrieval. The proposed approach is validated in the domain of sport videos for which some experimental results are presented. Content-Based Video Retrieval: A Database Perspective is designed for a professional audience, composed of researchers and practitioners in industry. This book is also suitable as a secondary text for graduate-level students in computer science and electrical engineering.This book focuses particularly on content-based video retrieval. After addressing basic concepts and techniques in the field, Content-Based Video Retrieval: A Database Perspective concentrates on the semantic gap problem, i.e., the problem of inferring semantics from raw video data, as the main problem of content-based video retrieval. This book identifies and proposes the integrated use of three different techniques to bridge the semantic gap, namely, spatio-temporal formalization methods, hidden Markov models, and dynamic Bayesian networks. As the problem is approached from a database perspective, the emphasis evolves from a database management system into a video database management system. This system allows a user to retrieve the desired video sequence among voluminous amounts of video data in an efficient and semantically meaningful way. This book also presents a modeling framework and a prototype of a content-based video management system that integrates the three methods and provides efficient, flexible, and scalable content-based video retrieval. The proposed approach is validated in the domain of sport videos for which some experimental results are presented.

Podaruj tę książkę jeszcze dziś
To łatwe
1 Dodaj książkę do koszyka i wybierz „dostarczyć jako prezent” 2 W odpowiedzi wyślemy Ci bon 3 Książka dotrze na adres obdarowanego

Logowanie

Zaloguj się do swojego konta. Nie masz jeszcze konta Libristo? Utwórz je teraz!

 
obowiązkowe
obowiązkowe

Nie masz konta? Zyskaj korzyści konta Libristo!

Dzięki kontu Libristo będziesz mieć wszystko pod kontrolą.

Utwórz konto Libristo