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Human action recognition based on point context tensor shape descriptor

机译:基于点上下文张量形状描述符的人体动作识别

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Motion trajectory recognition is one of the most important means to determine the identity of a moving object. A compact and discriminative feature representation method can improve the trajectory recognition accuracy. This paper presents an efficient framework for action recognition using a three-dimensional skeleton kinematic joint model. First, we put forward a rotation-scale-translation-invariant shape descriptor based on point context (PC) and the normal vector of hypersurface to jointly characterize local motion and shape information. Meanwhile, an algorithm for extracting the key trajectory based on the confidence coefficient is proposed to reduce the randomness and computational complexity. Second, to decrease the eigenvalue decomposition time complexity, a tensor shape descriptor (TSD) based on PC that can globally capture the spatial layout and temporal order to preserve the spatial information of each frame is proposed. Then, a multilinear projection process is achieved by tensor dynamic time warping to map the TSD to a low-dimensional tensor subspace of the same size. Experimental results show that the proposed shape descriptor is effective and feasible, and the proposed approach obtains considerable performance improvement over the state-of-the-art approaches with respect to accuracy on a public action dataset. (C) 2017 SPIE and IS&T
机译:运动轨迹识别是确定运动物体身份的最重要手段之一。一种紧凑而有区别的特征表示方法可以提高轨迹识别的准确性。本文提出了一种使用三维骨架运动学联合模型进行动作识别的有效框架。首先,我们基于点上下文(PC)和超曲面的法向矢量提出了旋转尺度-平移不变形状描述符,以共同表征局部运动和形状信息。同时,提出了一种基于置信度系数的关键轨迹提取算法,以减少随机性和计算复杂度。其次,为了降低特征值分解的时间复杂度,提出了一种基于PC的张量形状描述符(TSD),该张量形状描述符可以全局捕获空间布局和时间顺序,从而保留每一帧的空间信息。然后,通过张量动态时间扭曲将TSD映射到相同大小的低维张量子空间来实现多线性投影过程。实验结果表明,所提出的形状描述符是有效且可行的,并且在公共行动数据集的准确性方面,所提出的方法相对于最新方法具有相当大的性能改进。 (C)2017 SPIE和IS&T

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