作者
Min Jiang, Jun Kong, George Bebis, Hongtao Huo
发表日期
2015/4/1
期刊
Signal Processing: Image Communication
卷号
33
页码范围
29-40
出版商
Elsevier
简介
The launching of Microsoft Kinect with skeleton tracking technique opens up new potentials for skeleton based human action recognition. However, the 3D human skeletons, generated via skeleton tracking from the depth map sequences, are generally very noisy and unreliable. In this paper, we introduce a robust informative joints based human action recognition method. Inspired by the instinct of the human vision system, we analyze the mean contributions of human joints for each action class via differential entropy of the joint locations. There is significant difference between most of the actions, and the contribution ratio is highly in accordance with common sense. We present a novel approach named skeleton context to measure similarity between postures and exploit it for action recognition. The similarity is calculated by extracting the multi-scale pairwise position distribution for each informative joint. Then …
引用总数
2014201520162017201820192020202120222023202411912121510111261
学术搜索中的文章
M Jiang, J Kong, G Bebis, H Huo - Signal Processing: Image Communication, 2015