Human Action Recognition Based on DMMs, HOGs and Contourlet Transform

2015 IEEE International Conference on Multimedia Big Data(2015)

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摘要
This paper proposes a framework for recognizing human actions from depth video sequences by designing a novel feature descriptor based on Depth Motion Maps (DMMs), Contour let Transform (CT) and Histogram of Oriented Gradients (HOGs). First, CT is implemented on the generated DMMs of a depth video sequence and then HOGs are computed for each contour let sub-band. Finally, the concatenation of these HOG features is used as a feature descriptor for the depth video sequence. With this new feature descriptor, the l2-regularized collaborative representation classifier is utilized to recognize human actions. The experimental results on Microsoft Research Action3D dataset demonstrate that our proposed method can achieve the state-of-the-art performance for human activity recognition due to the precise feature extraction of contour let transform on the DMMs.
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关键词
human action recognition,DMM,HOG,contourlet transform,depth video sequences,feature descriptor,depth motion maps,CT,histogram-of-oriented gradients,contourlet subband,l2-regularized collaborative representation classifier,Microsoft Research Action3D dataset,feature extraction
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