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Human activity recognition using optical flow based feature set

40

Citations

23

References

2016

Year

Sandeep Kumar, Mala John

Unknown Venue

Abstract

An optical flow based approach for recognizing human actions and human-human interactions in video sequences has been addressed in this paper. We propose a local descriptor built by optical flow vectors along the edges of the action performer(s). By using the proposed feature descriptor with multi-class SVM classifier, recognition rates as high as 95.69% and 94.62% have been achieved for Weizmann action dataset and KTH action dataset respectively. The recognition rate achieved is 92.7% for UT interaction Set_l, 90.21% for UT interaction Set_2. The results demonstrate that the method is simple and efficient.

References

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