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Angular features analysis for gait recognition

机译:角度特征分析,用于步态识别

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Automatic gait recognition is an emergent biometrics identification system for recognizing humans by the way they walk. Its system is non-invasive because it operates from a distance via video cameras. The videos cum image frames are manually labeled to extract angular displacements of thigh's and lower leg's rotation, and foot flexion. The angular displacements data is analyzed using standard approach of Principal Component Analysis (PCA) and Canonical Analysis (CA). A cycle extraction procedure consisting of cubic-spline interpolation in SVR (Support Vector machine for Regression) and resampling within zero crossings is performed beforehand for an invariant analysis due to difference in walking speed of subjects. Combined dataset, is proposed for analyzing features that provide the most variations in gait recognition. Results have shown that the hip accounts for most variations among the three limbs' displacements data. Also, difference in temporal information of gait's signal does affect the recognition performance.
机译:自动步态识别是一种新兴的生物特征识别系统,用于通过人的行走方式对其进行识别。它的系统是非侵入性的,因为它可以通过摄像机远距离操作。视频和图像帧均经过手动标记,以提取大腿和小腿旋转的角度位移以及脚部弯曲。使用主成分分析(PCA)和规范分析(CA)的标准方法分析角位移数据。事先执行一个循环提取程序,该程序由SVR(回归支持向量机)中的三次样条插值和零交叉内的重采样组成,以对由于对象步行速度的差异而进行的不变分析。提出了组合数据集,用于分析在步态识别中提供最多变化的特征。结果表明,髋关节是三个肢体位移数据中变化最大的部分。而且,步态信号的时间信息的差异确实会影响识别性能。

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