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Stacked Filter Bank based descriptor for Human Action Recognition from Depth Sequences

机译:基于堆叠的滤波器银行的描述符从深度序列识别

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Registering the motion cues from a video to produce a compact representation is a crucial stage in video based Human Action Recognition (HAR). Exploiting the most prominent features using an efficient descriptor from such a representation also plays equally significant role in the performance of recognition models. In this work, we present a concise Depth Motion Map with striding which registers the motion cues from depth sequences on a video and a novel Filter Bank based descriptor, wherein a Taylor Series Expansion (TSE) filter, a Riesz filter and a gradient filter are stacked together to extract the prominent features. We empirically evaluate the feasibility of our method on MSR Action 3D dataset under standard protocols, achieving state-of-the-art results.
机译:从视频中注册动作提示以产生紧凑的表示是基于视频的人体动作识别(Har)的重要阶段。利用来自这种表示的高效描述符的最突出的特征也在识别模型的性能方面起着同样重要的作用。在这项工作中,我们提出了一个简明的深度运动图,其中具有寄存来自视频的深度序列的运动线索和基于新颖的滤波器组的描述符,其中泰勒序列扩展(TSE)滤波器,RIESZ滤波器和梯度滤波器是堆叠在一起以提取突出的特征。我们在标准协议下凭经验评估了我们对MSR动作3D数据集的方法的可行性,实现了最先进的结果。

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