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Combining Densely Sampled Form and Motion for Human Action Recognition

机译:结合密集采样的形式和动作进行人体动作识别

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We present a method for human action recognition from video, which exploits both form (local shape) and motion (local flow). Inspired by models of the human visual system, the two feature sets are processed independently in separate channels. The form channel extracts a dense local shape representation from every frame, while the motion channel extracts dense optic flow from the frame and its immediate predecessor. The same processing pipeline is applied in both channels: feature maps are pooled locally, down-sampled, and compared to a collection of learnt templates, yielding a vector of similarity scores. In a final step, the two score vectors are merged, and recognition is performed with a discriminative classifier. In an evaluation on two standard datasets our method outperforms the state-of-the-art, confirming that the combination of form and motion improves recognition.
机译:我们提出了一种从视频中识别人类动作的方法,该方法同时利用了形式(局部形状)和运动(局部流动)。受人类视觉系统模型的启发,这两个功能集在单独的通道中独立处理。表单通道从每个帧中提取密集的局部形状表示,而运动通道从帧及其前身提取密集的光学流。在两个通道中都应用了相同的处理管道:要素图在本地合并,下采样并与一组学习的模板进行比较,从而得出相似度得分的向量。在最后一步中,将两个得分向量合并,并使用判别式分类器进行识别。在对两个标准数据集的评估中,我们的方法优于最新技术,证实了形式和运动的组合可以提高识别度。

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