Personal Identification Using Footstep Based on Wavelets

A. Itai, H. Yasukawa
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引用次数: 11

Abstract

The characteristics of a footstep are determined by the gait, the footwear and the floor. Accurate footstep analysis would be useful in various applications, home security service, surveillance and understanding of human action since the gait expresses personality, age and gender. The feasibility of personal identification has been confirmed by using the feature parameter of footsteps, however, it is necessary to use more effective parameters since the recognition rate of this method decreases as the number of subjects increases. In this paper, wavelet transform is applied to feature extraction from footsteps. In audio classification, Fourier and wavelet transform are used to extract the feature of audio signals. Results show that the parameter proposed herein yields effective and practical personal identification
基于小波的足迹个人识别
一个脚印的特征是由步态、鞋子和地板决定的。准确的脚步分析将在各种应用,家庭安全服务,监控和理解人类行为中发挥作用,因为步态表达了个性,年龄和性别。使用脚步特征参数进行个人识别的可行性已经得到了证实,但由于该方法的识别率随着被试人数的增加而降低,因此需要使用更有效的参数。本文将小波变换应用于脚步声特征提取。在音频分类中,利用傅里叶变换和小波变换提取音频信号的特征。结果表明,本文提出的参数具有较好的个人识别效果和实用性
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