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Vector Quantization based Pairwise Joint Distance Maps (VQ-PJDM) for 3D Action Recognition

机译:基于矢量量化的成对联合距离图(VQ-PJDM)用于3D动作识别

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This paper presents an approach for 3D action recognition using vector quantization with pairwise joint distance maps. We name this approach as VQ-PJDM. The main problem for 3D action recognition using skeleton data is that dealing with the variable length of action sequences. We solve this problem by approximation of each action sequence as a codebook, which is the output of Vector Quantization (VQ) method. The codebook size is fixed for any length of the action sequence. After all actions in the data set are approximated by VQ method, the Pairwise Distance Joint Distance Maps(PJDM) are calculated from approximated actions. The voting classifier is employed for action classification. The empirical results on the UT Kinect dataset prove that the proposed method gives better results than that of state of the art.
机译:本文提出了一种使用矢量量化和成对联合距离图进行3D动作识别的方法。我们将此方法命名为VQ-PJDM。使用骨架数据进行3D动作识别的主要问题是处理可变长度的动作序列。我们通过将每个动作序列近似为一个码本来解决此问题,这是向量量化(VQ)方法的输出。对于动作序列的任何长度,码本的大小都是固定的。在通过VQ方法对数据集中的所有动作进行近似后,从近似动作中计算成对距离联合距离图(PJDM)。投票分类器用于动作分类。 UT Kinect数据集上的经验结果证明,所提出的方法比现有技术提供了更好的结果。

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