基于WOA-ANN和SSA-DBN技术的双多模态生物特征认证系统

Decis. Sci. Pub Date : 2023-03-01 DOI:10.3390/sci5010010
S. Singh, Shamik Tiwari
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引用次数: 1

摘要

身份管理通过向授权的所有者提供对信息的安全和简单的访问以及针对特定识别过程的解决方案来描述问题。单峰系统的缺点已经通过引入多峰生物识别系统得到解决。多模式系统的使用提高了生物识别系统的整体识别率。本研究建立了一种新的融合度,称为智能双多模态生物特征认证方案。在提出的工作中,两个多模态生物识别系统是由三个单模态生物识别系统相结合而开发的。心电图、巩膜和指纹是这项工作选择的单峰系统。采用基于WOA-ANN的决策级融合方法开发了序列模型生物识别系统。采用基于SSA-DBN的分数级融合技术开发了并行模型生物识别系统。生物识别认证对每个单峰系统执行预处理、特征提取、匹配和评分。在每个生物特征属性上,匹配分数和个体准确性是独立加密的。由于这三种生物特征的匹配器产生不同的值,因此演示了基于匹配器性能的融合过程。分别实现了两级融合技术(分数和特征),并将其结果与现有方案进行了比较,得出了最优模型。建议的计划利用最高的TPR、FPR和准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Dual Multimodal Biometric Authentication System Based on WOA-ANN and SSA-DBN Techniques
Identity management describes a problem by providing the authorized owners with safe and simple access to information and solutions for specific identification processes. The shortcomings of the unimodal systems have been addressed by the introduction of multimodal biometric systems. The use of multimodal systems has increased the biometric system’s overall recognition rate. A new degree of fusion, known as an intelligent Dual Multimodal Biometric Authentication Scheme, is established in this study. In the proposed work, two multimodal biometric systems are developed by combining three unimodal biometric systems. ECG, sclera, and fingerprint are the unimodal systems selected for this work. The sequential model biometric system is developed using a decision-level fusion based on WOA-ANN. The parallel model biometric system is developed using a score-level fusion based on SSA-DBN. The biometric authentication performs preprocessing, feature extraction, matching, and scoring for each unimodal system. On each biometric attribute, matching scores and individual accuracy are cyphered independently. A matcher performance-based fusion procedure is demonstrated for the three biometric qualities because the matchers on these three traits produce varying values. The two-level fusion technique (score and feature) is implemented separately, and their results with the current scheme are compared to exhibit the optimum model. The suggested plan makes use of the highest TPR, FPR, and accuracy rates.
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