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Human Action Recognition Using Hybrid Centroid Canonical Correlation Analysis

机译:使用杂交质心规范相关分析的人体行动识别

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Human action recognition is a hot research topic in image analysis and computer vision. In this paper, we propose Hybrid Centroid Canonical Correlation Analysis (HCCCA) and multi-set HCCCA for multimodal information analysis and fusion. Furthermore, we present a novel human action recognition framework by using multi-set HCCCA to fuse multimodal features, which include the hierarchal pyramid Depth Motion Map (DMM) for the depth images, the Histogram of Oriented Displacement (HOD) for the skeleton, and the statistical measurements for the accelerometer. The proposed framework was evaluated using two datasets MSR Action 3D dataset and UTD multimodal human action dataset. The experimental results demonstrated that the proposed framework can achieve a higher average accuracy compared to several existing methods.
机译:人类行动识别是图像分析和计算机视觉中的热门研究课题。本文提出了混合质心规范相关分析(HCCCA)和多级信息分析和融合的多套HCCCA。此外,我们通过使用多套HCCCA来呈现一种新颖的人体行动识别框架,以包括用于深度图像的层次金字塔深度运动图(DMM),为骨架的导向位移(HOD)的直方图,以及加速度计的统计测量。使用两个数据集MSR动作3D DataSet和UTD多模式人体行动数据集进行评估所提出的框架。实验结果表明,与几种现有方法相比,该框架可以达到更高的平均精度。

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