Compressed Domain Real-time Action Recognition

Chuohao Yeo, Parvez Ahammad, Kannan Ramchandran, S Sastry
2006 2006 IEEE Workshop on Multimedia Signal Processing  
We present a compressed domain scheme that is able to recognize and localize actions in real-time. The recognition problem is posed as performing a video query on a test video sequence. Our method is based on computing motion similarity using compressed domain features which can be extracted with low complexity. We introduce a novel motion correlation measure that takes into account differences in motion magnitudes. Our method is appearance invariant, requires no prior segmentation, alignment
more » ... stabilization, and is able to localize actions in both space and time. We evaluated our method on a large action video database consisting of 6 actions performed by 25 people under 3 different scenarios. Our classification results compare favorably with existing methods at only a fraction of their computational cost.
doi:10.1109/mmsp.2006.285263 dblp:conf/mmsp/YeoARS06 fatcat:tnygb7eohbgnfj4ipndya4lzu4