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Improving surface normals based action recognition in depth images

机译:基于深度图像中的基于曲面法的基于动作识别

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In this paper, we propose a new local descriptor for action recognition in depth images. Our proposed descriptor jointly encodes the shape and motion cues using surface normals in 4D space of depth, time, spatial coordinates and higher-order partial derivatives of depth values along spatial coordinates. In a traditional Bag-of-words (BoW) approach, local descriptors extracted from a depth sequence are encoded to form a global representation of the sequence. In our approach, local descriptors are encoded using Sparse Coding (SC) and Fisher Vector (FV), which have been recently proven effective for action recognition. Action recognition is then simply performed using a linear SVM classifier. Our proposed action descriptor is evaluated on two public benchmark datasets, MSRAction3D and MSRGesture3D. The experimental result shows the effectiveness of the proposed method on both the datasets.
机译:在本文中,我们提出了一种新的本地描述符,用于在深度图像中进行动作识别。我们所提出的描述符使用深度,时间,空间坐标和深度值的深度,时间,空间坐标和沿空间坐标的深度值的高阶部分导数的表面法线联合编码形状和运动提示。在传统的单词(弓)方法中,从深度序列提取的本地描述符被编码以形成序列的全局表示。在我们的方法中,使用稀疏编码(SC)和Fisher向量(FV)进行编码本地描述符,这些描述符最近被证明有效地识别。然后使用线性SVM分类器执行动作识别。我们所提出的行动描述符在两个公共基准数据集,MSRAction3D和MSROTERUTE3D上进行评估。实验结果表明了所提出的方法在数据集上的有效性。

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