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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Model-based human gait recognition using leg and arm movements
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Model-based human gait recognition using leg and arm movements

机译:利用腿部和手臂的动作进行基于模型的人的步态识别

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摘要

We have presented a model-based approach for human gait recognition, which is based on analyzing the leg and arm movements. An initial model is created based on anatomical proportions, and a posterior model is constructed upon the movements of the articulated parts of the body, using active contour models and the Hough transform. Fourier analysis is used to describe the motion patterns of the moving parts. The k-nearest neighbor rule applied to the phase-weighted Fourier magnitude of each segment's spectrum is used for classification. In contrast to the existing approaches, the main focus of this paper is on increasing the discrimination capability of the model through extra features produced from the motion of the arms. Experimental results indicate good performance of the proposed method. The technique has also proved to be able to reduce the adverse effects of self-occlusion, which is a common incident in human walking.
机译:我们提出了一种基于模型的人体步态识别方法,该方法基于对腿部和手臂运动的分析。基于解剖比例创建初始模型,并使用活动轮廓模型和霍夫变换,根据人体关节部位的运动构建后验模型。傅立叶分析用于描述运动部件的运动模式。应用于每个段频谱的相位加权傅立叶幅度的k最近邻规则用于分类。与现有方法相比,本文的主要重点是通过手臂运动产生的额外特征来提高模型的辨别能力。实验结果表明该方法具有良好的性能。该技术还被证明能够减少自我阻塞的不利影响,而自我阻塞是人类行走过程中的常见事件。

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