Siddaganga Institute of Technology, Tumakuru Affiliated to Visvesvaraya Technological University, Belagavi 590018, Karnataka, India.
University of Garden City, Khartoum, Sudan.
Biomed Res Int. 2024 Jun 6;2024:8112209. doi: 10.1155/2024/8112209. eCollection 2024.
Existing security issues like keys, pins, and passwords employed presently in almost all the fields that have certain limitations like passwords and pins can be easily forgotten; keys can be lost. To overcome such security issues, new biometric features have shown outstanding improvements in authentication systems as a result of significant developments in biological digital signal processing. Currently, the multimodal authentications have gained huge attention in biometric systems which can be either behavioural or physiological. A biometric system with multimodality club data from many biometric modalities increases each biometric system's performance and makes it more resistant to spoof attempts. Apart from electrocardiogram (ECG) and iris, there are a lot of other biometric traits that can be captured from the human body. They include face, fingerprint, gait, keystroke dynamics, voice, DNA, palm vein, and hand geometry recognition. Electrocardiograms (ECG) have recently been employed in unimodal and multimodal biometric recognition systems as a novel biometric technology. When compared to other biometric approaches, ECG has the intrinsic quality of a person's liveness, making it difficult to fake. Similarly, the iris also plays an important role in biometric authentication. Based on these assumptions, we present a multimodal biometric person authentication system. The projected method includes preprocessing, segmentation, feature extraction, feature fusion, and ensemble classifier where majority voting is presented to obtain the final outcome. The comparative analysis shows the overall performance as 96.55%, 96.2%, 96.2%, 96.5%, and 95.65% in terms of precision, 1-score, sensitivity, specificity, and accuracy.
现有的安全问题,如目前几乎所有领域都使用的密钥、PIN 和密码,都存在一定的局限性,例如密码和 PIN 容易忘记,密钥可能丢失。为了克服这些安全问题,新的生物识别特征在认证系统中显示出了出色的改进,这是生物数字信号处理的重大发展的结果。目前,多模态认证在生物识别系统中引起了广泛关注,这些系统可以是行为的也可以是生理的。具有多模态融合数据的生物识别系统可以从许多生物识别模式中获取数据,从而提高每个生物识别系统的性能,并使其更能抵抗欺骗尝试。除了心电图 (ECG) 和虹膜之外,还有许多其他生物特征可以从人体上捕获。它们包括面部、指纹、步态、击键动力学、语音、DNA、掌静脉和手形识别。心电图 (ECG) 最近已被用作一种新的生物识别技术应用于单模态和多模态生物识别识别系统。与其他生物识别方法相比,ECG 具有人的活体的内在质量,难以伪造。同样,虹膜在生物认证中也起着重要的作用。基于这些假设,我们提出了一种多模态生物识别人员认证系统。该方法包括预处理、分割、特征提取、特征融合和集成分类器,其中提出了多数投票以获得最终结果。对比分析显示,在精度、1 分、敏感性、特异性和准确性方面,总体性能分别为 96.55%、96.2%、96.2%、96.5%和 95.65%。