Performance Evaluation of Image Enhancement Techniques on Transfer Learning for Touchless Fingerprint Recognition
S Sreehari, Dilavar P D, S M Anzar, Alavikunhu Panthakkan, and Saad, Ali Amin

TL;DR
This paper evaluates how image enhancement techniques improve the accuracy of transfer learning models in touchless fingerprint recognition, demonstrating significant performance gains with enhanced images across multiple deep learning architectures.
Contribution
It provides a comparative analysis showing that fingerprint image enhancement significantly boosts transfer learning accuracy in touchless fingerprint recognition systems.
Findings
Enhanced images improve model accuracy substantially.
VGG-16 achieved 98% training and 93% testing accuracy with enhancement.
Transfer learning with enhancement outperforms without enhancement.
Abstract
Fingerprint recognition remains one of the most reliable biometric technologies due to its high accuracy and uniqueness. Traditional systems rely on contact-based scanners, which are prone to issues such as image degradation from surface contamination and inconsistent user interaction. To address these limitations, contactless fingerprint recognition has emerged as a promising alternative, providing non-intrusive and hygienic authentication. This study evaluates the impact of image enhancement tech-niques on the performance of pre-trained deep learning models using transfer learning for touchless fingerprint recognition. The IIT-Bombay Touchless and Touch-Based Fingerprint Database, containing data from 200 subjects, was employed to test the per-formance of deep learning architectures such as VGG-16, VGG-19, Inception-V3, and ResNet-50. Experimental results reveal that transfer learning…
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Taxonomy
MethodsVGG-16 · Visual Geometry Group 19 Layer CNN
