Jia-xin Cai

1paper

1 Paper

CVMar 13, 2016
Learning zeroth class dictionary for human action recognition

Jia-xin Cai, Xin Tang, Lifang Zhang et al.

In this paper, a discriminative two-phase dictionary learning framework is proposed for classifying human action by sparse shape representations, in which the first-phase dictionary is learned on the selected discriminative frames and the second-phase dictionary is built for recognition using reconstruction errors of the first-phase dictionary as input features. We propose a "zeroth class" trick for detecting undiscriminating frames of the test video and eliminating them before voting on the action categories. Experimental results on benchmarks demonstrate the effectiveness of our method.