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Automatic extraction and description of human gait models for recognition purposes

机译:用于识别目的的自动步态模型的提取和描述

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摘要

Using gait as a biometric is of emerging interest. We describe a new model-based moving feature extraction analysis is presented that automatically extracts and describes human gait for recognition. The gait signature is extracted directly from the evidence gathering process. This is possible by using a Fourier series to describe the motion of the upper leg and apply temporal evidence gathering techniques to extract the moving model from a sequence of images. Simulation results highlight potential performance benefits in the presence of noise. Classification uses the κ-nearest neighbour rule applied to the Fourier components of the motion of the upper leg. Experimental analysis demonstrates that an improved classification rate is given by the phase-weighted Fourier magnitude information over the use of the magnitude information alone. The improved classification capability of the phase-weighted magnitude information is verified using statistical analysis of the separation of clusters in the feature space. Furthermore, the technique is shown to be able to handle high levels of occlusion, which is of especial importance in gait as the human body is self-occluding. As such, a new technique has been developed to automatically extract and describe a moving articulated shape, the human leg, and shown its potential in gait as a biometric.
机译:使用步态作为生物特征引起了人们的兴趣。我们描述了一种新的基于模型的运动特征提取分析方法,该方法可以自动提取并描述人的步态进行识别。步态签名直接从证据收集过程中提取。这可以通过使用傅立叶级数描述大腿的运动并应用时间证据收集技术从一系列图像中提取运动模型来实现。仿真结果突出显示了存在噪声时潜在的性能优势。分类使用应用于大腿运动的傅立叶分量的κ最近邻居规则。实验分析表明,相对于仅使用幅度信息,相位加权傅里叶幅度信息可以提高分类速度。通过对特征空间中聚类分离的统计分析,验证了相位加权幅度信息的改进分类能力。此外,该技术被证明能够处理高水平的遮挡,这在步态中特别重要,因为人体会自我遮挡。这样,已经开发出一种新技术来自动提取和描述运动的关节形状,即人的腿,并在步态方面显示出其潜在的生物特征。

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