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Recognizing Human Actions with Outlier Frames by Observation Filtering and Completion

机译:通过观察值筛选和完成识别异常帧中的人类行为

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This article addresses the problem of recognizing partially observed human actions. Videos of actions acquired in the real world often contain corrupt frames caused by various factors. These frames may appear irregularly, and make the actions only partially observed. They change the appearance of actions and degrade the performance of pretrained recognition systems. In this article, we propose an approach to address the corrupt-frame problem without knowing their locations and durations in advance. The proposed approach includes two key components: outlier filtering and observation completion. The former identifies and filters out unobserved frames, and the latter fills up the filtered parts by retrieving coherent alternatives from training data. Hidden Conditional Random Fields (HCRFs) are then used to recognize the filtered and completed actions. Our approach has been evaluated on three datasets, which contain both fully observed actions and partially observed actions with either real or synthetic corrupt frames. The experimental results show that our approach performs favorably against the other state-of-the-art methods, especially when corrupt frames are present.
机译:本文解决了识别部分观察到的人类行为的问题。在现实世界中获取的动作视频通常包含由各种因素引起的损坏帧。这些框架可能不规则地出现,并且只能部分观察到动作。它们会改变动作的外观并降低预训练识别系统的性能。在本文中,我们提出了一种解决框架损坏问题的方法,而无需提前知道其位置和持续时间。所提出的方法包括两个关键组成部分:离群值滤波和观察完成。前者识别并过滤掉未观察到的帧,而后者则通过从训练数据中检索相干替代物来填充过滤后的部分。隐藏条件随机字段(HCRF)然后用于识别已过滤和已完成的操作。我们的方法已经在三个数据集上进行了评估,这些数据集既包含完全观察到的动作,又包含具有真实或合成损坏帧的部分观察到的动作。实验结果表明,我们的方法相对于其他最新方法具有良好的性能,特别是当存在损坏的帧时。

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