基于高斯隶属度-自关注编码器融合网络的多模态生物特征识别

IF 5.9 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
V. Gurunathan, R. Sudhakar
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引用次数: 0

摘要

本文提出了一个安全可靠的多模态生物识别(MB)认证框架,该框架将深度学习(DL)与区块链技术(BCT)协同结合,以解决单模态系统的固有局限性和多模态生物识别数据中的特征冗余等挑战。该系统利用来自手背、手掌和手指的静脉图像,使用对比度有限的自适应直方图均衡化(CLAHE)增强以提高局部对比度。鉴别特征通过优化的ResNet50模型提取,并通过基于突变的野马优化(MWHO)算法进行微调,以确保更好的表示。一个关键的创新是提出的高斯隶属度自关注编码器融合网络(GMSAEF-Net),一种有效管理多模态特征相关和冗余的新架构。与传统的融合方法不同,GMSAEF-Net采用模糊高斯隶属函数来分配模态感知的关注权,并引入自关注机制来建模特征通道之间的相互依赖关系,从而增强了融合特征的紧凑性和可分辨性。为了确保数据的完整性和抗篡改性,系统利用区块链框架内的同态加密来为每个模态生成唯一的加密密钥。结合加权余弦相似度和交叉熵的混合损失函数进一步提高了分类性能。在三个基准多模态静脉数据集上的实验结果表明,该方法的识别准确率高达98.77%,等效错误率(EER)显著降低至9.78%,优于现有方法,验证了该系统在安全生物特征认证应用中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gaussian membership-self-attention encoder fusion network (GMSAEF-Net) for the multimodal biometric recognition
This paper presents a secure and robust multimodal biometric (MB) authentication framework that synergistically combines deep learning (DL) with blockchain technology (BCT) to address the inherent limitations of unimodal systems and challenges such as feature redundancy in multimodal biometric data. The system utilizes vein images from the dorsal hand, palm, and fingers, enhanced using contrast-limited adaptive histogram equalization (CLAHE) to improve local contrast. Discriminative features are extracted via an optimized ResNet50 model, fine-tuned through a mutation-based wild horse optimization (MWHO) algorithm to ensure superior representation. A key innovation is the proposed Gaussian Membership Self-Attention Encoder Fusion Network (GMSAEF-Net), a novel architecture that effectively manages multimodal feature correlation and redundancy. Unlike conventional fusion methods, GMSAEF-Net employs fuzzy Gaussian membership functions to assign modality-aware attention weights and incorporates a self-attention mechanism to model interdependencies across feature channels, thereby enhancing the compactness and discriminability of the fused features. To ensure data integrity and resistance to tampering, the system leverages homomorphic encryption within a blockchain framework to generate unique cryptographic keys per modality. A hybrid loss function combining weighted cosine similarity and cross-entropy further improves classification performance. Experimental results on three benchmark multimodal vein datasets demonstrate high recognition accuracy of 98.77% and a significantly reduced Equal Error Rate (EER) of 9.78%, outperforming existing approaches and validating the proposed system’s effectiveness for secure biometric authentication applications.
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来源期刊
Ain Shams Engineering Journal
Ain Shams Engineering Journal Engineering-General Engineering
CiteScore
10.80
自引率
13.30%
发文量
441
审稿时长
49 weeks
期刊介绍: in Shams Engineering Journal is an international journal devoted to publication of peer reviewed original high-quality research papers and review papers in both traditional topics and those of emerging science and technology. Areas of both theoretical and fundamental interest as well as those concerning industrial applications, emerging instrumental techniques and those which have some practical application to an aspect of human endeavor, such as the preservation of the environment, health, waste disposal are welcome. The overall focus is on original and rigorous scientific research results which have generic significance. Ain Shams Engineering Journal focuses upon aspects of mechanical engineering, electrical engineering, civil engineering, chemical engineering, petroleum engineering, environmental engineering, architectural and urban planning engineering. Papers in which knowledge from other disciplines is integrated with engineering are especially welcome like nanotechnology, material sciences, and computational methods as well as applied basic sciences: engineering mathematics, physics and chemistry.
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