Learning contrastive feature distribution model for interaction recognition

Journal of Visual Communication and Image Representation(2015)

引用 54|浏览95
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摘要
We introduce an intra-inter-frame skeleton feature for interaction description.We learn CFDM for a discriminative representation of interactions.We capture a new database of interactions, CR-UESTC.We evaluate our proposed CFDM approach on CR-UESTC and SBU interaction databases.CFDM performs better than CM and BoW, and obtains a higher accuracy than previous works. In this paper, we learn a Contrastive Feature Distribution Model (CFDM) for interaction recognition. Our contributions are three-folded. First of all, we introduce an intra-inter-frame skeleton feature for interaction description. Secondly, we learn CFDM for a discriminative representation of interactions. In this step, we mine contrastive features to create a dictionary, and learn the probability distribution of dictionary words to construct CFDM in positive and negative training samples. With CFDM, we represent interactions in a discriminative way for recognition. Since there is few skeleton based interaction databases now, we capture a new database, CR-UESTC, which is the third contribution. We evaluate the proposed CFDM approach on CR-UESTC and SBU interaction databases, and compare the result of CFDM with the CM and the BoW approach. The comparison indicates that the recognition accuracy of three approaches is: CFDMCMBoW. Compared with Yun et al. (2012), the proposed CFDM also obtain a better result on SBU database.
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关键词
Interaction recognition,CFDM,Contrast mining,CR-UESTC database,SBU database,Human skeleton,Action recognition,HRI
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