Human action recognition with depth cameras [electronic resource] / Jiang Wang, Zicheng Liu, Ying Wu.
2014
TK7882.P7
Linked e-resources
Linked Resource
Online Access
Details
Title
Human action recognition with depth cameras [electronic resource] / Jiang Wang, Zicheng Liu, Ying Wu.
Author
Wang, Jiang, author.
ISBN
9783319045603
3319045601
9783319045610 electronic book
331904561X electronic book
3319045601
9783319045610 electronic book
331904561X electronic book
Published
Cham ; New York : Springer, [2014]
Language
English
Description
1 online resource
Call Number
TK7882.P7
Dewey Decimal Classification
681/.25
Summary
Action recognition is an enabling technology for many real world applications, such as human-computer interaction, surveillance, video retrieval, retirement home monitoring, and robotics. In the past decade, it has attracted a great amount of interest in the research community. Recently, the commoditization of depth sensors has generated much excitement in action recognition from depth sensors. New depth sensor technology has enabled many applications that were not feasible before. On one hand, action recognition becomes far easier with depth sensors. On the other hand, the drive to recognize more complex actions presents new challenges. One crucial aspect of action recognition is to extract discriminative features. The depth maps have completely different characteristics from the RGB images. Directly applying features designed for RGB images does not work. Complex actions usually involve complicated temporal structures, human-object interactions, and person-person contacts. New machine learning algorithms need to be developed to learn these complex structures. This work enables the reader to quickly familiarize themselves with the latest research in depth-sensor based action recognition, and to gain a deeper understanding of recently developed techniques. It will be of great use for both researchers and practitioners who are interested in human action recognition with depth sensors. The text focuses on feature representation and machine learning algorithms for action recognition from depth sensors. After presenting a comprehensive overview of the state of the art in action recognition from depth data, the authors then provide in-depth descriptions of their recently developed feature representations and machine learning techniques, including lower-level depth and skeleton features, higher-level representations to model the temporal structure and human-object interactions, and feature selection techniques for occlusion handling
Note
Action recognition is an enabling technology for many real world applications, such as human-computer interaction, surveillance, video retrieval, retirement home monitoring, and robotics. In the past decade, it has attracted a great amount of interest in the research community. Recently, the commoditization of depth sensors has generated much excitement in action recognition from depth sensors. New depth sensor technology has enabled many applications that were not feasible before. On one hand, action recognition becomes far easier with depth sensors. On the other hand, the drive to recognize more complex actions presents new challenges. One crucial aspect of action recognition is to extract discriminative features. The depth maps have completely different characteristics from the RGB images. Directly applying features designed for RGB images does not work. Complex actions usually involve complicated temporal structures, human-object interactions, and person-person contacts. New machine learning algorithms need to be developed to learn these complex structures. This work enables the reader to quickly familiarize themselves with the latest research in depth-sensor based action recognition, and to gain a deeper understanding of recently developed techniques. It will be of great use for both researchers and practitioners who are interested in human action recognition with depth sensors. The text focuses on feature representation and machine learning algorithms for action recognition from depth sensors. After presenting a comprehensive overview of the state of the art in action recognition from depth data, the authors then provide in-depth descriptions of their recently developed feature representations and machine learning techniques, including lower-level depth and skeleton features, higher-level representations to model the temporal structure and human-object interactions, and feature selection techniques for occlusion handling
Access Note
Access limited to authorized users.
Source of Description
Description based on print version record.
Added Author
Liu, Zicheng, author.
Wu, Ying, 1973- author.
Wu, Ying, 1973- author.
Series
SpringerBriefs in computer science.
Available in Other Form
Human Action Recognition With Depth Cameras
Linked Resources
Online Access
Record Appears in
Online Resources > Ebooks
All Resources
All Resources
Table of Contents
Introduction
Learning Actionlet Ensemble for 3D Human Action Recognition
Random Occupancy Patterns
Conclusion
Learning Actionlet Ensemble for 3D Human Action Recognition
Random Occupancy Patterns
Conclusion