药水:动作识别的姿势动作表现

Vasileios Choutas, Philippe Weinzaepfel, Jérôme Revaud, C. Schmid
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引用次数: 242

摘要

大多数最先进的动作识别方法依赖于独立处理外观和动作的双流架构。在本文中,我们声称将它们联合考虑为动作识别提供了丰富的信息。我们引入了一种新的表示,它优雅地编码了一些语义关键点的运动。我们使用人体关节作为这些关键点,并将其称为姿态运动表示药水。具体来说,我们首先运行一个最先进的人体姿势估计器[4],并在每帧中提取人体关节的热图。我们通过暂时聚合这些概率图来获得我们的药剂表示。这是通过根据视频剪辑中帧的相对时间对每个帧进行“着色”并将它们相加来实现的。整个视频片段的固定大小表示适合使用浅卷积神经网络对动作进行分类。我们的实验评估表明,PoTion优于其他最先进的姿势表示[6,48]。此外,它是标准外观和运动流的补充。当将PoTion与最近的双流I3D方法[5]相结合时,我们在JHMDB、HMDB和UCF101数据集上获得了最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PoTion: Pose MoTion Representation for Action Recognition
Most state-of-the-art methods for action recognition rely on a two-stream architecture that processes appearance and motion independently. In this paper, we claim that considering them jointly offers rich information for action recognition. We introduce a novel representation that gracefully encodes the movement of some semantic keypoints. We use the human joints as these keypoints and term our Pose moTion representation PoTion. Specifically, we first run a state-of-the-art human pose estimator [4] and extract heatmaps for the human joints in each frame. We obtain our PoTion representation by temporally aggregating these probability maps. This is achieved by 'colorizing' each of them depending on the relative time of the frames in the video clip and summing them. This fixed-size representation for an entire video clip is suitable to classify actions using a shallow convolutional neural network. Our experimental evaluation shows that PoTion outperforms other state-of-the-art pose representations [6, 48]. Furthermore, it is complementary to standard appearance and motion streams. When combining PoTion with the recent two-stream I3D approach [5], we obtain state-of-the-art performance on the JHMDB, HMDB and UCF101 datasets.
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