A Feasible Adaptive Fuzzy Genetic Technique for Face, Fingerprint, and Palmprint Based Multimodal Biometrics Systems

Q4 Multidisciplinary
Kishor Kumar Singh, Snehlata Barde
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引用次数: 0

Abstract

A biometric system relies solely on one or a few biometric characteristics to verify a person's identity. Multimodal biometric authentication is a hot emerging area of research. The memory requirements, response times, and adoption/operating costs of conventional multimodal biometric identification methods are all higher than those of single-modal approaches. In this article, we conducted an examination of a framework for multimodal biometric identification systems, which demonstrates a practical implementation of soft computing strategies adaptable to face, finger, and palmprint biometrics. We applied a modified Gabor filter for feature extraction to increase processing speed and reduces the timing. Validation of the proposed system was achieved by the development of a fusion system using principal component analysis as a single matcher classifier. An adaptive fuzzy genetic algorithm was applied for weight optimization which generates verification at a high-rate performance using the fuzzy logic function. Employing fusion in identification mode, the technology was critically examined. The results indicated that the multimodal biometric system outperforms in terms of TPR, FPR, TNR, FNR, Precision, Recall, F-score, and Accuracy, resulting in reduced processing time and memory footprint, and speedier implementation.
基于人脸、指纹和掌纹的多模式生物识别系统的可行自适应模糊遗传技术
生物识别系统仅依靠一个或几个生物特征来验证一个人的身份。多模态生物特征认证是一个新兴的研究热点。传统的多模态生物识别方法的内存需求、响应时间和采用/操作成本都高于单模态方法。在本文中,我们对多模态生物识别系统的框架进行了研究,该框架演示了适用于面部、手指和掌纹生物识别的软计算策略的实际实现。我们采用改进的Gabor滤波器进行特征提取,以提高处理速度并减少时间。所提出的系统的验证是通过开发一个融合系统,使用主成分分析作为单一匹配分类器。采用自适应模糊遗传算法进行权值优化,利用模糊逻辑函数生成高速率性能的验证。采用融合识别模式,对该技术进行了严格的审查。结果表明,多模态生物识别系统在TPR、FPR、TNR、FNR、Precision、Recall、F-score和Accuracy方面表现优异,减少了处理时间和内存占用,加快了实现速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Current Science and Technology
Journal of Current Science and Technology Multidisciplinary-Multidisciplinary
CiteScore
0.80
自引率
0.00%
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