基于监督字典学习的交叉角行为识别

Guanghui Lu, Bo Liu, Yanshan Xiao
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摘要

在固定的角度下,行为识别的效果非常好。为了解决单一角度的局限性,本文采用了一种有效的思想来解决交叉角度的行为识别问题。我们提出监督字典学习用于交叉角度行为识别,它学习一个共同的字典来表示相同行为在不同角度下的共同行为。这使得相同的行为在不同的透视图中具有相似的稀疏表示。同时我们学习了一组特征字典来表示不同视角下的相同行为,从而区分了不同视角下相同行为的稀疏表示。最后,结合不同角度得到同一行为的共同字典和特征字典,以便对行为进行表征和分类。实验表明,该方法能更有效地解决交叉角行为识别问题。
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Cross-angle behavior recognition via supervised dictionary learning
The effect of behavior recognition has been very good in a fixed angle. However they do not work well in a new angle, in order to solve the limitation of single angle, the paper adopts an effective idea to solve the cross-angle behavior recognition. We propose supervised dictionary learning for cross-angle behavior recognition, which learns a common dictionary to represent the common behavior of the same behavior under different perspectives. This makes the same behavior with similar sparse representation in different perspectives. At the same time we learn a set of characteristic dictionaries to represent the same behavior under different perspectives, so that the sparse representation of the same behavior from different perspectives is distinguished. Finally, obtain the common dictionary and the characteristic dictionary of the same behavior combined with different angles, in order that the behavior can be represented and classified. Experiments show that our proposed method can more effectively solve the cross-angle behavior recognition.
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