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FH-SSTNet: Forehead Creases based User Verification using Spatio-Spatial Temporal Network

Authors :
Sharma, Geetanjali
Jaswal, Gaurav
Nigam, Aditya
Ramachandra, Raghavendra
Publication Year :
2024

Abstract

Biometric authentication, which utilizes contactless features, such as forehead patterns, has become increasingly important for identity verification and access management. The proposed method is based on learning a 3D spatio-spatial temporal convolution to create detailed pictures of forehead patterns. We introduce a new CNN model called the Forehead Spatio-Spatial Temporal Network (FH-SSTNet), which utilizes a 3D CNN architecture with triplet loss to capture distinguishing features. We enhance the model's discrimination capability using Arcloss in the network's head. Experimentation on the Forehead Creases version 1 (FH-V1) dataset, containing 247 unique subjects, demonstrates the superior performance of FH-SSTNet compared to existing methods and pre-trained CNNs like ResNet50, especially for forehead-based user verification. The results demonstrate the superior performance of FH-SSTNet for forehead-based user verification, confirming its effectiveness in identity authentication.<br />Comment: 6 pages, 5 Figure, IWBF conference

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.16202
Document Type :
Working Paper