Title of article :
Representation for Action Recognition Using Trajectory-BasedLow-Level Local Feature and Mid-Level Motion Feature
Author/Authors :
Li, Xiaoqiang School of Computer Engineering and Sciences - Shanghai University, Shanghai, China , Wang, Dan School of Computer Engineering and Sciences - Shanghai University, Shanghai, China , Zhang, Yin School of Computer Engineering and Sciences - Shanghai University, Shanghai, China
Abstract :
The dense trajectories and low-level local features are widely used in action recognition recently. However, most of these methods ignore the motion part of action which is the key factor to distinguish the different human action. This paper proposes a new two-layer model of representation for action recognition by describing the video with low-level features and mid-level motion part model. Firstly, we encode the compensated flow (𝑤-flow) trajectory-based local features with Fisher Vector (FV) to retain the low-level characteristic of motion. Then, the motion parts are extracted by clustering the similar trajectories with spatiotemporal distance between trajectories. Finally the representation for action video is the concatenation of low-level descriptors encodingvector and motion part encoding vector. It is used as input to the LibSVM for action recognition. The experiment results demonstrate the improvements on J-HMDB and YouTube datasets, which obtain 67.4% and 87.6%, respectively.
Farsi abstract :
فاقد چكيده فارسي
Keywords :
dense trajectories , low-level local features , recognition , Mid-Level Motion Feature
Journal title :
Applied Computational Intelligence and Soft Computing