Statistical Gabor-Based Gait Recognition Using Region-Level Analysis

Binsaadoon A. G. Abdullah, El-Sayed M. El-Alfy
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引用次数: 5

Abstract

Gait recognition has become a popular research problem gaining importance for human identification based on walking style. It has emerged as an attractive research problem due to possessing several desirable merits unlike other biometrics. However, most of the existing gait recognition methods that involve Gabor-based filters suffer from the curse of dimensionality, even with the use of a dimensionality reduction technique. This adds more computational and storage burdens and may cause difficulties to identify subjects with a high degree of confidence. In this paper a statistical gait recognition approach is proposed based on the analysis of overlapping Gabor-based regions. The Gait Energy Image (GEI) is first constructed from the gait sequence as a spatio-temporal summary. Then, the GEI image is convolved with a Gabor filter bank of 8 different orientations and 5 different scales. A statistical analysis is then applied to extract discriminative gait features from multi-overlapped Gabor-based regions. Consecutively, an SVM classifier is applied to measure the gait similarity and identify the subject. Comprehensive experiments are carried out to evaluate the proposed approach and compare it to existing approaches. The results have shown that promising performance can be achieved with the proposed approach under a variety of scenarios.
基于区域分析的统计gabor步态识别
步态识别已成为一个热门的研究问题,对基于行走方式的人体识别具有重要意义。它已成为一个有吸引力的研究问题,因为它具有不同于其他生物识别技术的几个可取的优点。然而,大多数现有的基于gabor滤波器的步态识别方法,即使使用降维技术,也会受到维数诅咒的困扰。这增加了更多的计算和存储负担,并可能导致难以以高可信度识别受试者。本文提出了一种基于gabor重叠区域分析的统计步态识别方法。首先从步态序列中构造步态能量图像(GEI)作为一个时空汇总。然后,将GEI图像与8个不同方向和5个不同尺度的Gabor滤波器组进行卷积。然后应用统计分析从多个重叠的基于gabor的区域提取判别步态特征。然后,利用支持向量机分类器测量步态相似度,对目标进行识别。对所提出的方法进行了综合实验,并与现有方法进行了比较。结果表明,该方法在各种场景下都能取得良好的性能。
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