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๐Ÿ“

Machine Learning for Multimedia Content Analysis

โœ Scribed by Yihong Gong, Wei Xu (auth.)


Publisher
Springer
Year
2007
Tongue
English
Leaves
277
Edition
1
Category
Library

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โœฆ Synopsis


Challenges in complexity and variability of multimedia data have led to revolutions in machine learning techniques. Multimedia data, such as digital images, audio streams and motion video programs, exhibit richer structures than simple, isolated data items. A number of pixels in a digital image collectively conveys certain visual content to viewers. A TV video program consists of both audio and image streams that unfold the underlying story. To recognize the visual content of a digital image, or to understand the underlying story of a video program, we may need to label sets of pixels or groups of image and audio frames jointly.

Machine Learning for Multimedia Content Analysis introduces machine learning techniques that are particularly powerful and effective for modeling spatial, temporal structures of multimedia data and for accomplishing common tasks of multimedia content analysis. This book systematically covers these techniques in an intuitive fashion and demonstrates their applications through case studies. This volume uses a large number of figures to illustrate and visualize complex concepts, and provides insights into the characteristics of many algorithms through examinations of their loss functions and straightforward comparisons.

Machine Learning for Multimedia Content Analysis is designed for an academic and professional audience. Researchers will find this book an invaluable tool for applying machine learning techniques to multimedia content analysis. This volume is also suitable for practitioners in industry.

โœฆ Table of Contents


Front Matter....Pages I-XV
Introduction....Pages 1-11
Dimension Reduction....Pages 15-35
Data Clustering Techniques....Pages 37-70
Introduction of Graphical Models....Pages 73-80
Markov Chains and Monte Carlo Simulation....Pages 81-114
Markov Random Fields and Gibbs Sampling....Pages 115-147
Hidden Markov Models....Pages 149-177
Inference and Learning for General Graphical Models....Pages 179-197
Maximum Entropy Model and Conditional Random Field....Pages 201-233
Max-Margin Classifications....Pages 235-266
Back Matter....Pages 268-277

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