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首页> 外文期刊>International Journal of Biometrics >Person tracking and segmentation for human gait biometric system
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Person tracking and segmentation for human gait biometric system

机译:步态生物识别系统的人跟踪和分割

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摘要

Person tracking and segmentation in an unstructured environment provides an increasing demand to solve human identification problems. This paper addresses mixture of Gaussian (MoG) technique for statistically background modelling and robust human tracking method for deriving an intrinsic gait signature. The front and back leg angles are calculated from the sequence of extracted human motion silhouette frames which are being used as gait features. The training gait database is made with these extracted gait features for ten different training subjects. The principal component analysis (PCA) is applied on derived gait signatures which transforms the input features into a low dimensional feature space. The classification technique is followed by Baye's decision rule coupled with multivariate Gaussian distribution. The results are compared with k-nearest neighbour rule and minimum distance classification (MDC) techniques by accuracy and computational cost metric. The experimental verification has been performed on CASIA standard gait database. The Baye's classifier produces an encouraging classification result with minimum misclassification error rate.
机译:在非结构化环境中的人员跟踪和分割对解决人员识别问题提出了越来越高的要求。本文讨论了用于统计背景建模的高斯(MoG)技术和用于得出内在步态特征的鲁棒人工跟踪方法的混合。根据提取的用作步态特征的人体运动轮廓帧的序列来计算前后腿的角度。训练步态数据库由这些提取的步态特征构成,用于十个不同的训练主题。主成分分析(PCA)应用于派生的步态特征,该特征将输入特征转换为低维特征空间。贝叶斯决策规则与多元高斯分布相结合,遵循分类技术。通过准确性和计算成本度量,将结果与k最近邻规则和最小距离分类(MDC)技术进行比较。实验验证已在CASIA标准步态数据库上进行。贝叶斯分类器以最小的误分类错误率产生了令人鼓舞的分类结果。

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