Moustakidis Serafeim P, Theocharis John B, Giakas Giannis
Department of Electricaland Computer Engineering, Division of Electronics and Computer Engineering, Aristotle University of Thessaloniki, 54124 Thessaloniki, Greece.
IEEE Trans Syst Man Cybern B Cybern. 2008 Dec;38(6):1476-85. doi: 10.1109/TSMCB.2008.927722.
An effective subject recognition approach is designed in this paper, using ground reaction force (GRF) measurements of human gait. The method is a three-stage procedure: 1) The original GRF data are translated through wavelet packet (WP) transform in the time-frequency domain. Using a fuzzy-set-based criterion, we determine an optimal WP decomposition, involving feature subspaces with distinguishing gait characteristics. 2) A feature extraction scheme is employed next for wavelet feature ranking, according to discrimination power. 3) The classification task is accomplished by means of a kernel-based support vector machine. The design parameters of the classifier are tuned through a genetic algorithm to improve recognition rates. The method is evaluated on a database comprising GRF records obtained from 40 subjects. To account for the natural variability of human gait, the experimental setup is designed, allowing different walking speeds and loading conditions. Simulation results demonstrate that high recognition rates can be achieved with moderate number of features and for different training/testing settings. Finally, the performance of our approach is favorably compared with the one obtained using other traditional classification algorithms.
本文设计了一种有效的人体识别方法,该方法利用人体步态的地面反作用力(GRF)测量数据。该方法包括三个阶段:1)原始GRF数据通过小波包(WP)变换在时频域进行转换。使用基于模糊集的准则,我们确定最优的WP分解,包括具有独特步态特征的特征子空间。2)接下来采用一种特征提取方案,根据判别能力对小波特征进行排序。3)分类任务通过基于核的支持向量机完成。通过遗传算法调整分类器的设计参数以提高识别率。该方法在一个包含从40名受试者获得的GRF记录的数据库上进行评估。为了考虑人体步态的自然变异性,设计了实验装置,允许不同的步行速度和负载条件。仿真结果表明,使用适量的特征并针对不同的训练/测试设置,可以实现较高的识别率。最后,将我们的方法的性能与使用其他传统分类算法获得的性能进行了有利的比较。