Cross-domain human action recognition.

Wei Bian, Dacheng Tao, Yong Rui
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引用次数: 29

Abstract

Conventional human action recognition algorithms cannot work well when the amount of training videos is insufficient. We solve this problem by proposing a transfer topic model (TTM), which utilizes information extracted from videos in the auxiliary domain to assist recognition tasks in the target domain. The TTM is well characterized by two aspects: 1) it uses the bag-of-words model trained from the auxiliary domain to represent videos in the target domain; and 2) it assumes each human action is a mixture of a set of topics and uses the topics learned from the auxiliary domain to regularize the topic estimation in the target domain, wherein the regularization is the summation of Kullback-Leibler divergences between topic pairs of the two domains. The utilization of the auxiliary domain knowledge improves the generalization ability of the learned topic model. Experiments on Weizmann and KTH human action databases suggest the effectiveness of the proposed TTM for cross-domain human action recognition.

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跨域人体动作识别。
当训练视频数量不足时,传统的人体动作识别算法无法很好地发挥作用。为了解决这一问题,我们提出了一种转移主题模型(TTM),该模型利用从辅助域的视频中提取的信息来辅助目标域的识别任务。TTM的特点有两个方面:1)使用辅助域训练的词袋模型来表示目标域的视频;2)假设每个人的行为是一组主题的混合,并使用从辅助领域学习到的主题对目标领域的主题估计进行正则化,其中正则化是两个领域的主题对之间的Kullback-Leibler散度之和。辅助领域知识的利用提高了学习主题模型的泛化能力。在Weizmann和KTH人体动作数据库上的实验表明,所提出的TTM在跨域人体动作识别方面是有效的。
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