Title :
STAP: Spatial-Temporal Attention-Aware Pooling for Action Recognition
Author :
Nguyen, Troy V. ; Zheng Song ; Shuicheng Yan
Author_Institution :
Dept. for Technol., Innovation & Enterprise, Singapore Polytech., Singapore, Singapore
Abstract :
Human action recognition is valuable for numerous practical applications, e.g., gaming, video surveillance, and video search. In this paper we hypothesize that the classification of actions can be boosted by designing a smart feature pooling strategy under the prevalently used bag-of-words-based representation. Founded on automatic video saliency analysis, we propose the spatial-temporal attention-aware pooling scheme for feature pooling. First, the video saliencies are predicted using the video saliency model, and the localized spatial-temporal features are pooled at different saliency levels and video-saliency-guided channels are formed. Saliency-aware matching kernels are thus derived as the similarity measurement of these channels. Intuitively, the proposed kernels calculate the similarities of the video foreground (salient areas) or background (nonsalient areas) at different levels. Finally, the kernels are fed into popular support vector machines for action classification. Extensive experiments on three popular data sets for action classification validate the effectiveness of our proposed method, which outperforms the state-of-the-art methods, namely 95.3% on UCF Sports (better by 4.0%), 87.9% on YouTube data set (better by 2.5%), and achieves comparable results on Hollywood2 dataset.
Keywords :
gesture recognition; image classification; support vector machines; Hollywood2 dataset; STAP scheme; YouTube data set; action classification; automatic video saliency analysis; bag-of-words-based representation; gaming; human action recognition; localized spatial-temporal features; saliency-aware matching kernels; smart feature pooling strategy; spatial-temporal attention-aware pooling scheme; support vector machines; video background; video foreground; video search; video surveillance; video-saliency-guided channels; Computational modeling; Feature extraction; Kernel; Predictive models; Support vector machines; Visualization; YouTube; Action recognition; Feature pooling; Visual attention; feature pooling; visual attention;
Journal_Title :
Circuits and Systems for Video Technology, IEEE Transactions on
DOI :
10.1109/TCSVT.2014.2333151