Title :
Learning sparse representation for dynamic gesture recogniton
Author :
Minglei Tong;Han Hong
Author_Institution :
School of Electronic and Information, Shanghai University of Electronic Power, Shanghai, 200030, China
Abstract :
His Gesture recognition is an important task for gesture-based Human Computer Interaction. A novel gesture recognition model based on sparse representation is proposed in this paper. The model mainly consists of the following four stages: firstly, the spatial-temporal interest points are detected from the video sequences; secondly, a cuboid is founded around each spatial-temporal interest point and the 3D SIFT features are extracted based on the cuboids; thirdly, we encode local 3D SIFT features within the sparse coding framework. In so doing, each local 3D SIFT is transformed to a linear combination of a few atoms in a pre-trained dictionary. Finally, we employ an max pooling strategy to get the final representation of a video and we use multi-class linear SVM to accomplish the classification task. We test our model in the video dataset made by ourselves and get a good performance.
Keywords :
"Hidden Markov models","Feature extraction","Three-dimensional displays","Encoding","Gesture recognition","Dictionaries","Video sequences"
Conference_Titel :
Signal Processing Systems (SiPS), 2015 IEEE Workshop on
DOI :
10.1109/SiPS.2015.7345021