The Action Similarity Labeling Challenge

IEEE Transactions on Pattern Analysis and Machine Intelligence(2012)

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摘要
Recognizing actions in videos is rapidly becoming a topic of much research. To facilitate the development of methods for action recognition, several video collections, along with benchmark protocols, have previously been proposed. In this paper, we present a novel video database, the “Action Similarity LAbeliNg” (ASLAN) database, along with benchmark protocols. The ASLAN set includes thousands of videos collected from the web, in over 400 complex action classes. Our benchmark protocols focus on action similarity (same/not-same), rather than action classification, and testing is performed on never-before-seen actions. We propose this data set and benchmark as a means for gaining a more principled understanding of what makes actions different or similar, rather than learning the properties of particular action classes. We present baseline results on our benchmark, and compare them to human performance. To promote further study of action similarity techniques, we make the ASLAN database, benchmarks, and descriptor encodings publicly available to the research community.
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关键词
Web services,computer vision,pattern recognition,protocols,video databases,ASLAN database,Web service,action classes,action recognition,action similarity labeling,benchmark protocols,descriptor encodings,video collections,video database,Action recognition,action similarity,benchmark.,video database,web videos
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