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Adaptive 3D shape context representation for motion trajectory classification

机译:用于运动轨迹分类的自适应3D形状上下文表示

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摘要

The measurement of similarity between two motion trajectories is one of the fundamental task for motion analysis, perception and recognition. Previous research focus on 2D trajectory similarity measurement. With the advent of 3D sensors, it is possible to collect large amounts of 3D trajectory data for more precise motion representation. As trajectories in 3D space may often exhibit a similar motion pattern but may differ in location, orientation, scale, and appearance variations, the trajectory descriptor must be invariant to these degrees of freedom. Shape context is one of the rich local shape descriptors can be used to represent the trajectory in 2D space, however, rarely applied in the 3D motion trajectory recognition field. To handle 3D data, in this paper, we first naturally extend the shape context into the spatiotemporal domain by adopting a spherical neighborhood, and named it 3D Shape Context(3DSC). To achieve better global invariant on trajectories classification, the adaptive outer radius of 3DSC for extracting 3D Shape Context feature is proposed. The advantages of our proposed 3D shape context are: (1) It is invariant to motion trajectories translation and scale in the spatiotemporal domain; (2) It contains the whole trajectory points in the 3DSC ball volume, thus can achieve global information representation and is good for solving sub-trajectories problem; (3) It is insensitive to the appearance variations in the identical meaning trajectories, meanwhile, can greatly discriminate the distinct meaning trajectories. In trajectory recognition phase, we consider a feature-to-feature alignment between motion trajectories based on dynamic time warping and then use the one nearest neighbor (1NN) classifier for final accuracy evaluation. We test the performance of proposed 3D SC-DTW on UCI ASL large dataset, Digital hand dataset and the experimental results demonstrate the effectiveness of our method.
机译:测量两个运动轨迹之间的相似度是运动分析,感知和识别的基本任务之一。先前的研究集中在2D轨迹相似度测量上。随着3D传感器的出现,有可能收集大量3D轨迹数据以实现更精确的运动表示。由于3D空间中的轨迹通常可能表现出相似的运动模式,但是在位置,方向,比例和外观变化方面可能会有所不同,因此轨迹描述符必须对这些自由度保持不变。形状上下文是丰富的局部形状描述符之一,可用于表示2D空间中的轨迹,但是很少应用于3D运动轨迹识别领域。为了处理3D数据,在本文中,我们首先通过采用球形邻域将形状上下文自然地扩展到时空域,并将其命名为3D形状上下文(3DSC)。为了更好地实现轨迹分类的全局不变性,提出了用于提取3D形状上下文特征的3DSC自适应外半径。我们提出的3D形状上下文的优点是:(1)在时空域中,运动轨迹的平移和缩放不变。 (2)将整个轨迹点包含在3DSC球体中,从而可以实现全局信息表示,有利于解决子轨迹问题; (3)对相同意义轨迹的外观变化不敏感,同时,可以极大地区分不同意义轨迹。在轨迹识别阶段,我们考虑基于动态时间扭曲的运动轨迹之间的特征到特征对齐,然后使用一个最近邻居(1NN)分类器进行最终精度评估。我们在UCI ASL大数据集,数字手数据集上测试了提出的3D SC-DTW的性能,实验结果证明了该方法的有效性。

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