Multimedia Data Mining and Analysis from Motion Contents: Effective Techniques for Managing Motional Multimedia Data - Softcover

Zhou, Yue

 
9783639102802: Multimedia Data Mining and Analysis from Motion Contents: Effective Techniques for Managing Motional Multimedia Data

Synopsis

Object motion in multimedia database contains important information for data content analysis especially event detection. The motion content in its raw form is real-value multidimensional time series. Processing and analyzing this kind of data is not trivial since most standard machine learning algorithms can only be applied to data in vector space. In this work, we explore the techniques to solve three problems related to motion cues in multimedia databases: object motion estimation, motion representation, and motion analysis to recognize activities and events. In this book we first discuss our work on object detection and tracking, which estimate the object motion. We then introduce our edit distance based approach to measure the similarity between motion trajectories in its raw form. We also present our work on a novel trajectory representation framework, "bag of segments," by which trajectories are transformed to a frequency in vector space so that most traditional machine learning algorithms can be directly applied to the motion trajectory data. Finally, we introduce our work on using the Granger causality test to analyze multi-object interactions from motion.

"synopsis" may belong to another edition of this title.

About the Author

Yue Zhou is currently a member of research staff in Microsoft Corporation. His research focuses on data mining and machine learning technology for large scale databases including multimedia databases. He received his Ph.D. in Electrical and Computer Engineering from the University of Illinois at Urbana- Champaign in 2008.

"About this title" may belong to another edition of this title.