Unsupervised Discovery, Modeling, and Analysis of Long Term Activities.

ICVS'11: Proceedings of the 8th international conference on Computer vision systems(2011)

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摘要
This work proposes a complete framework for human activity discovery, modeling, and recognition using videos. The framework uses trajectory information as input and goes up to video interpretation. The work reduces the gap between low-level vision information and semantic interpretation, by building an intermediate layer composed of Primitive Events. The proposed representation for primitive events aims at capturing meaningful motions (actions) over the scene with the advantage of being learned in an unsupervised manner. We propose the use of Primitive Events as descriptors to discover, model, and recognize activities automatically. The activity discovery is performed using only real tracking data. Semantics are added to the discovered activities (e.g., "Preparing Meal", "Eating") and the recognition of activities is performed with new datasets.
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关键词
Primitive Events,activity discovery,complete framework,human activity discovery,low-level vision information,semantic interpretation,trajectory information,video interpretation,Preparing Meal,intermediate layer,Unsupervised discovery,long term activity
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