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Genetic feature selection for gait recognition

机译:步态识别的遗传特征选择

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Many research studies have demonstrated that gait can serve as a useful biometric modality for human identification at a distance. Traditional gait recognition systems, however, have mostly been evaluated without explicitly considering the most relevant gait features, which might have compromised performance. We investigate the problem of selecting a subset of the most relevant gait features for improving gait recognition performance. This is achieved by discarding redundant and irrelevant gait features while preserving the most informative ones. Motivated by our previous work on feature subset selection using genetic algorithms ( GAs), we propose using GAs to select an optimal subset of gait features. First, features are extracted using kernel principal component analysis ( KPCA) on spatiotemporal projections of gait silhouettes. Then, GA is applied to select a subset of eigenvectors in KPCA space that best represents a subject's identity. Each gait pattern is then represented by projecting it only on the eigenvectors selected by the GA. To evaluate the effectiveness of the selected features, we have experimented with two different classifiers: k nearest- neighbor and Naive Bayes classifier. We report considerable gait recognition performance improvements on the Georgia Tech and CASIA databases. (C) 2015 SPIE and IS&T
机译:许多研究表明,步态可以作为有用的生物特征识别方法,用于远距离人类识别。但是,大多数对传统步态识别系统的评估都没有明确考虑最相关的步态特征,因为这可能会降低性能。我们研究了选择最相关的步态特征子集以改善步态识别性能的问题。这是通过丢弃多余和不相关的步态特征,同时保留最多信息的步态来实现的。基于我们以前使用遗传算法(GA)进行特征子集选择的工作,我们建议使用GA选择步态特征的最佳子集。首先,使用步态轮廓时空投影的核主成分分析(KPCA)提取特征。然后,应用GA来选择KPCA空间中最能代表受试者身份的特征向量子集。然后,通过仅将其投影到GA选择的特征向量上来表示每个步态模式。为了评估所选功能的有效性,我们尝试了两种不同的分类器:k最近邻分类器和朴素贝叶斯分类器。我们报告了佐治亚理工学院和CASIA数据库上步态识别性能的显着提高。 (C)2015 SPIE和IS&T

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