Multimedia Data Mining and Analytics: Disruptive Innovation - Hardcover

 
9783319149974: Multimedia Data Mining and Analytics: Disruptive Innovation

Inhaltsangabe

This book provides fresh insights into the cutting edge of multimedia data mining, reflecting how the research focus has shifted towards networked social communities, mobile devices and sensors. The work describes how the history of multimedia data processing can be viewed as a sequence of disruptive innovations. Across the chapters, the discussion covers the practical frameworks, libraries, and open source software that enable the development of ground-breaking research into practical applications. Features: reviews how innovations in mobile, social, cognitive, cloud and organic based computing impacts upon the development of multimedia data mining; provides practical details on implementing the technology for solving real-world problems; includes chapters devoted to privacy issues in multimedia social environments and large-scale biometric data processing; covers content and concept based multimedia search and advanced algorithms for multimedia data representation, processing and visualization.

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Über die Autorin bzw. den Autor

Aaron K. Baughman is a member of the Special Events Group at IBM (USA) for World Wide Sports. Previously, he was Technical Lead on a DeepQA Embed Research project that included an instance of the Jeopardy! Challenge.

Jiang (John) Gao is a Principal Scientist in the Advanced Development and Technology Group at Nokia USA, working on multimedia and mobile applications, data mining and computer vision.

Jia-Yu Pan is a software engineer at Google (USA), working on data mining and anomaly detection in big data.

Valery A. Petrushin is a Principal Scientist in the Research and Development Group at Opera Solutions (USA). His previous publications include the successful Springer title Multimedia Data Mining and Knowledge Discovery.

Von der hinteren Coverseite

This authoritative text/reference provides fresh insights into the cutting edge of multimedia data mining, reflecting how the research focus has shifted towards networked social communities, mobile devices and sensors.

Presenting a detailed exploration into the progression of the field, the book describes how the history of multimedia data processing can be viewed as a sequence of disruptive innovations. Across the chapters, the discussion covers the practical frameworks, libraries, and open source software that enable the development of ground-breaking research into practical applications.

Topics and features:

·         Contains contributions from an international selection of pre-eminent authorities in the field

·         Reviews how disruptive innovations in mobile, social, cognitive, cloud and organic based computing impacts upon the development of multimedia data mining

·         Provides practical details on implementing the technology for solving real-world multimedia problems

·         Includes chapters devoted to privacy issues in multimedia social environments, and large-scale biometric data processing

·         Covers content and concept based multimedia search, and advanced algorithms for multimedia data representation, processing and visualization

The illuminating viewpoints presented in this comprehensive volume will be of great interest to researchers and graduate students involved in machine learning and pattern recognition, as well as to professional multimedia analysts and software developers.

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Weitere beliebte Ausgaben desselben Titels

9783319347219: Multimedia Data Mining and Analytics: Disruptive Innovation

Vorgestellte Ausgabe

ISBN 10:  3319347217 ISBN 13:  9783319347219
Verlag: Springer, 2016
Softcover