Meng, Hongying, Pears, Nick, Freeman, Michael and Bailey, Chris (2008) Motion history histograms for human action recognition. In: Embedded Computer Vision (Advances in Pattern Recognition). Springer, UK. ISBN 9781848003033
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Item Type: | Book Section |
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Item Status: | Live Archive |
Abstract
In this chapter, a compact human action recognition system is presented with a view to applications in security systems, human-computer interaction and intelligent environments. There are three main contributions: Firstly, the framework of an embedded human action recognition system based on a support vector machine (SVM) classifier and some compact motion features has been proposed. Secondly, the limitations of the well known Motion History Image (MHI) are addressed and a new Motion History Histograms (MHH) feature is proposed to represent the motion information in the video. MHH not only provides rich motion information, but also remains computationally inexpensive. We combine MHI and MHH into a low dimensional feature vector for the system and achieve improved performance in human action recognition over comparable methods, which use tracking-free temporal template motion representations. Finally, an simple system based on SVM and MHI has been implemented on a reconfigurable embedded computer vision architecture for real-time gesture recognition.
Additional Information: | In this chapter, a compact human action recognition system is presented with a view to applications in security systems, human-computer interaction and intelligent environments. There are three main contributions: Firstly, the framework of an embedded human action recognition system based on a support vector machine (SVM) classifier and some compact motion features has been proposed. Secondly, the limitations of the well known Motion History Image (MHI) are addressed and a new Motion History Histograms (MHH) feature is proposed to represent the motion information in the video. MHH not only provides rich motion information, but also remains computationally inexpensive. We combine MHI and MHH into a low dimensional feature vector for the system and achieve improved performance in human action recognition over comparable methods, which use tracking-free temporal template motion representations. Finally, an simple system based on SVM and MHI has been implemented on a reconfigurable embedded computer vision architecture for real-time gesture recognition. |
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Keywords: | Embedded system, FPGA |
Subjects: | G Mathematical and Computer Sciences > G411 Computer Architectures G Mathematical and Computer Sciences > G760 Machine Learning G Mathematical and Computer Sciences > G400 Computer Science G Mathematical and Computer Sciences > G740 Computer Vision |
Divisions: | College of Science > School of Computer Science |
ID Code: | 1973 |
Deposited On: | 12 Aug 2009 13:26 |
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