ijaers social
facebook
twitter
Blogger
google plus

International Journal of Advanced Engineering, Management and Science


AI-Driven Multimodal Biometric Classification: Improving Recognition Accuracy Using Finger, Face, and Ear Biometrics

( Vol-11,Issue-6,November - December 2025 )

Author(s): Surinder Chauhan, Dr. Sher Jung


Download Full Text PDF
Download with Cover Page Total View : 376
Downloads : 7
Page No: 126-130
ijaems crossref doiDOI: 10.22161/ijaems.116.10

Keywords:

Biometric recognition, Multimodal biometrics, Fingerprint, face, and ear recognition, Convolutional Neural Networks (CNN), Vision Transformers (ViT), Feature extraction, Fusion strategy, Recognition accuracy, Identity verification, High-security applications

Abstract:

Biometric recognition has emerged as a critical component of secure identity verification systems. While unimodal biometrics such as fingerprint, face, or ear recognition have been widely researched, they suffer from limitations related to noise, occlusion, and spoofing. This paper proposes an AI-driven multimodal biometric system integrating fingerprint, face, and ear modalities to enhance recognition accuracy and robustness. Using Convolutional Neural Networks (CNNs) and Vision Transformers (ViTs) for feature extraction and a fusion-based classification strategy, the proposed approach is conceptually shown to outperform unimodal systems. A literature comparison and expected results suggest that the fusion model can achieve recognition accuracy of approximately 97–98%, surpassing most existing methods. The study concludes by highlighting the potential of multimodal biometrics for real-world applications in high-security domains.

Article Info:

Received: 25 Oct 2025; Received in revised form: 23 Nov 2025; Accepted: 27 Nov 2025; Available online: 01 Dec 2025

Cite This Article:
Citations:
APA | ACM | Chicago | Harvard | IEEE | MLA | Vancouver | Bibtex
Share: