Action recognition using invariant features under unexampled viewing conditions

Litian Sun, K. Aizawa
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引用次数: 14

Abstract

A great challenge in real-world applications of action recognition is the lack of sufficient label information because of variance in the recording viewpoint and differences between individuals. A system that can adapt itself according to these variances is required for practical use. We present a generic method for extracting view-invariant features from skeleton joints. These view-invariant features are further refined using a stacked, compact autoencoder. To model the challenge of real-world applications, two unexampled test settings (NewView and NewPerson) are used to evaluate the proposed method. Experimental results with these test settings demonstrate the effectiveness of our method.
在未示例的观看条件下使用不变特征的动作识别
由于记录视角的差异和个体之间的差异,缺乏足够的标签信息是动作识别在实际应用中的一个巨大挑战。在实际应用中,需要一个能够根据这些差异进行自我调整的系统。提出了一种从骨骼关节中提取视图不变特征的通用方法。这些视图不变特性使用堆叠、紧凑的自编码器进一步细化。为了模拟现实世界应用程序的挑战,使用两个未示例的测试设置(NewView和NewPerson)来评估所建议的方法。实验结果证明了该方法的有效性。
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