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Matrix Descriptor of Changes (MDC): Activity Recognition Based on Skeleton

机译:变化矩阵描述器(MDC):基于骨架的活动识别

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A new method called Matrix Descriptor of Changes (MDC) is introduced in this work for description and recognition of human activity from sequences of skeletons. The primary focus was on one of the main problems in this area which is different duration of activities; it is assumed that the beginning and the end are known. Some existing methods use bag of features, hidden Markov models, recurrent neural networks or straighten the time interval by different sampling so that each activity has the same number of frames to solve this problem. The essence of our method is creating one or more matrices with a constant size. The sizes of matrices depend on the vector dimension containing the per-frame low-level features from which the matrix is created. The matrices then characterize the activity, even if we assume that certain activities may have different durations. The principle of this method is tested with two types of input features: (ⅰ) 3D position of the skeleton joints and (ⅱ) invariant angular features of the skeleton. All kinds of feature types are processed by MDC separately and, in the subsequent step, all the information gathered together as a feature vector are used for recognition by Support Vector Machine classifier. Experiments have shown that the results are similar to results of the state-of-the-art methods. The primary contribution of proposed method was creating a new simple descriptor for activity recognition with preservation of the state-of-the-art results. This method also has a potential for parallel implementation and execution.
机译:在这项工作中引入了一种新的方法,称为变化矩阵描述(MDC),用于描述和识别骨骼序列中的人类活动。主要重点是该领域的主要问题之一,即活动的持续时间不同。假定开始和结束是已知的。一些现有方法使用特征包,隐马尔可夫模型,递归神经网络或通过不同采样拉直时间间隔,以使每个活动具有相同数量的帧来解决此问题。我们方法的本质是创建一个或多个大小恒定的矩阵。矩阵的大小取决于包含从中创建矩阵的每帧低级特征的矢量维。然后,即使我们假设某些活动可能具有不同的持续时间,矩阵也可以表征活动。该方法的原理已通过两种类型的输入特征进行了测试:(ⅰ)骨骼关节的3D位置和(ⅱ)骨骼的不变角特征。 MDC分别处理各种类型的特征,然后在后续步骤中,将所有收集在一起作为特征向量的信息用于支持向量机分类器的识别。实验表明,结果与最新方法的结果相似。提出的方法的主要贡献是创建了一个新的用于活动识别的简单描述符,同时保留了最新的结果。此方法还具有并行实现和执行的潜力。

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