Rejection-Based Classification For Action Recognition Using A Spatio-Temporal Dictionary

2015 23rd European Signal Processing Conference (EUSIPCO)(2015)

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摘要
This paper presents a method for human action recognition in videos which learns a dictionary whose atoms are spatio-temporal patches. We use these gray-level spatio-temporal patches to learn motion patterns inside the videos. This method also relies on a part-based human detector in order to segment and narrow down several interesting regions inside the videos without a need for hounding boxes annotations. We show that the utilization of these parts improves the classification performance. We introduce a rejection-based classification method which is based on a Support Vector Machine. This method has been tested on UCF sports action dataset with good results.
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关键词
Dictionary Learning,Action Recognition,Classification,Videos,Spatio-temporal patches
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