基于模糊互补准则的GRF信号步态识别特征提取

S. Moustakidis, J. Theocharis, G. Giakas
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引用次数: 14

摘要

提出了一种基于小波特征提取的地面反作用力识别方法。首先提出了一种小波包分解方法来识别不同的频率子带,然后在选择的小波包子带上应用一种有效的特征选择方法,提供一组紧凑的强大的互补特征。我们的方法依赖于基于非全局模糊集的准则来评估每个子带或特征的重要性。这种关于模式的局部评价度量是通过调用为每个类分配成员等级的模糊类分配方案构造的模糊划分向量(FPV)来实现的。FS由一个模糊互补准则(FuzCoC)驱动,该准则作用于特征fpv,同时处理特征之间的识别能力和冗余度。为了证明我们的方法的性能,我们设计了一个广泛的实验装置,任务难度越来越大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature extraction based on a fuzzy complementary criterion for gait recognition using GRF signals
A novel wavelet-based feature extraction approach is introduced in this paper for subject recognition utilizing ground reaction force (GRF) measurements. A wavelet-packet (WP) decomposition scheme is firstly proposed to recognize the discriminating frequency subbands and subsequently an efficient feature selection (FS) method is applied on the selected WP bands providing a compact set of powerful and complementary features. Our approach relies on a non-global fuzzy set-based criterion to assess the significance of every subband or feature. This local evaluation measure with respect to patterns is implemented by a fuzzy partition vector (FPV) constructed by invoking a fuzzy class allocation scheme that assigns membership grades to every class. The FS is driven by a fuzzy complementary criterion (FuzCoC) that acts upon the feature FPVs, handling simultaneously both the discrimination power and the redundancy between the features. To demonstrate the performance capabilities of our approach an extensive experimental setup is designed with tasks of increasing difficulty.
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