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Sparse coding-based spatiotemporal saliency for action recognition

机译:基于稀疏编码的时空显着性用于动作识别

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In this paper, we address the problem of human action recognition by representing image sequences as a sparse collection of patch-level spatiotemporal events that are salient in both space and time domain. Our method uses a multi-scale volumetric representation of video and adaptively selects an optimal space-time scale under which the saliency of a patch is most significant. The input image sequences are first partitioned into non-overlapping patches. Then, each patch is represented by a vector of coefficients that can linearly reconstruct the patch from a learned dictionary of basis patches. We propose to measure the spatiotemporal saliency of patches using Shannon's self-information entropy, where a patch's saliency is determined by information variation in the contents of the patch's spatiotemporal neighborhood. Experimental results on two benchmark datasets demonstrate the effectiveness of our proposed method.
机译:在本文中,我们通过将图像序列表示为稀疏的补丁程序级时空事件集合来解决人类动作识别问题,这些事件在时域和时域上都是显着的。我们的方法使用视频的多尺度体积表示,并自适应地选择最佳时空尺度,在该尺度下补丁的显着性最为显着。首先将输入图像序列划分为不重叠的块。然后,每个补丁都由一个系数向量表示,该系数向量可以从学习的基础补丁字典中线性地重构该补丁。我们建议使用Shannon的自信息熵来测量补丁的时空显着性,其中补丁的显着性是由补丁时空邻域的内容中的信息变化确定的。在两个基准数据集上的实验结果证明了我们提出的方法的有效性。

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