A method for human action recognition

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摘要

This article deals with the problem of classification of human activities from video. Our approach uses motion features that are computed very efficiently, and subsequently projected into a lower dimensional space where matching is performed. Each action is represented as a manifold in this lower dimensional space and matching is done by comparing these manifolds. To demonstrate the effectiveness of this approach, it was used on a large data set of similar actions, each performed by many different actors. Classification results were very accurate and show that this approach is robust to challenges such as variations in performers' physical attributes, color of clothing, and style of motion. An important result of this article is that the recovery of the three-dimensional properties of a moving person, or even the two-dimensional tracking of the person's limbs need not precede action recognition.

论文关键词:Motion recognition,Human tracking,Articulated motion

论文评审过程:Received 25 February 2002, Revised 4 March 2003, Accepted 18 March 2003, Available online 25 May 2003.

论文官网地址:https://doi.org/10.1016/S0262-8856(03)00068-4