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Accurate Recognition Method of Human Body Movement Blurred Image Gait Features Using Graph Neural Network

机译:使用图形神经网络的准确识别方法模糊图像步态特征

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摘要

In view of the problems of low precision, poor quality, and long time of gait feature recognition due to the influence of human body movement environment on the recognition process of the current gait feature recognition method of human body movement blurred image, a new method of gait feature recognition based on graph neural network (GNN) method is proposed. The gait features of human movement blurred images were extracted, and the fusion clustering recognition of the GNN algorithm was used to locate the gait features of human movement blurred images. The gait features of human body movement blurred images were located by the GNN method. According to the contour feature point info of the human body movement blurred image, the standard deviation of gait feature location of the human body movement blurred image was calculated, the gait feature of the blurred image of human body movement was reconstructed, and the gait recognition of the human body movement blurred image was achieved. The results show that the extraction of human movement is good, with high positioning confidence, good recognition quality, average recognition accuracy of 92%, and greatly shortened recognition time.
机译:鉴于低精度,质量差和长时间的步态特征识别因人体运动环境对人体运动的当前步态特征识别方法的识别过程模糊图像,一种新方法提出了基于图形神经网络(GNN)方法的步态特征识别。提取人体运动的步态特征模糊图像,并使用GNN算法的融合聚类识别来定位人类运动的步态特征模糊图像。人体运动的步态特征模糊图像通过GNN方法定位。根据人体运动的轮廓特征点信息模糊图像,计算了人体运动的步态特征位置的标准偏差模糊图像,重建了人体运动的模糊图像的步态特征,并且步态识别人体运动的模糊图像达到了模糊。结果表明,人类运动的提取良好,具有高定位置信度,良好的识别质量,平均识别准确度为92%,识别时间大大缩短。

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