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On double-level kernel self-similarities for 3D motion trajectory description and recognition

机译:用于3D运动轨迹描述和识别的双层内核自相似性

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3D Spatiotemporal trajectories can provide compact and informative clues in motion analysis of human bodies, robots and moving objects. This paper proposes a new framework for 3D motion trajectory-based recognition, which can achieve satisfactory performance in both accuracy and efficiency. Motion trajectories are firstly transformed into the Double-level Kernel Self-similarity Matrices (DKSM). The DKSM representation is constructed by investigating the pair-wise kernel distance within each trajectory itself at the trajectory level and the component level respectively, which has shown strong invariance ability and descriptive power. As each matrix in the DKSM representation can be viewed as a gray-scale image, the well-proven Histogram of Oriented Gradients (HOG) descriptors extracted from the DKSM are concatenated as the final DKSM-HOG descriptor. Next, we train a SVM classifier for multiple class recognition with the training DKSM-HOG descriptors as the input. Finally, extensive motion trajectory recognition experiments are conducted on two public datasets to demonstrate the effectiveness of the proposed method.
机译:3D时空轨迹可以在人体,机器人和运动物体的运动分析中提供紧凑而有用的线索。本文提出了一种基于3D运动轨迹的识别的新框架,该框架可以在准确性和效率上达到令人满意的性能。首先将运动轨迹转换为双层内核自相似矩阵(DKSM)。 DKSM表示是通过分别研究每个轨迹自身在轨迹级别和分量级别上的成对内核距离而构造的,具有很强的不变性和描述能力。由于DKSM表示中的每个矩阵都可以看作是灰度图像,因此将从DKSM中提取的经过充分验证的定向直方图(HOG)描述符直方图连接为最终DKSM-HOG描述符。接下来,我们以训练DKSM-HOG描述符作为输入来训练用于多类识别的SVM分类器。最后,在两个公共数据集上进行了广泛的运动轨迹识别实验,以证明该方法的有效性。

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