Actionness-Assisted Recognition Of Actions

2015 IEEE International Conference on Computer Vision (ICCV)(2015)

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摘要
We elicit from a fundamental definition of action low-level attributes that can reveal agency and intentionality. These descriptors are mainly trajectory-based, measuring sudden changes, temporal synchrony, and repetitiveness. The actionness map can be used to localize actions in a way that is generic across action and agent types. Furthermore, it also groups interacting regions into a useful unit of analysis, which is crucial for recognition of actions involving interactions. We then implement an actionness-driven pooling scheme to improve action recognition performance. Experimental results on various datasets show the advantages of our method on action detection and action recognition comparing with other state-of-the-art methods.
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关键词
actionness-assisted recognition,low-level attributes,intentionality,descriptors,temporal synchrony,repetitiveness,agent types,actionness-driven pooling scheme,action recognition performance,action detection
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