Journal of Innovative Image Processing is accepted for inclusion in Scopus. click here
Home / Archives / Volume-7 / Issue-3 / Article-12

Volume - 7 | Issue - 3 | september 2025

Towards Condition-Robust Palm Vein Recognition: Dataset and Performance Analysis Open Access
Suhas Chate  , Vijay Patil, Yuvraj Parkale, Shailendrakumar Mukane  94
Pages: 792-819
Cite this article
Chate, Suhas, Vijay Patil, Yuvraj Parkale, and Shailendrakumar Mukane. "Towards Condition-Robust Palm Vein Recognition: Dataset and Performance Analysis." Journal of Innovative Image Processing 7, no. 3 (2025): 792-819
Published
12 September, 2025
Abstract

Palm vein biometrics is contactless identification through vascular vein patterns. The paper presents a new dataset of 500 palm vein images from 100 individuals in 5 conditions (normal, hot, cold, dusty, and lotion-applied). In contrast to current benchmarks, the dataset directly simulates environmental and physiological variations. It compares three feature-extraction pipelines (Kumar Gabor, IUWT-SAD and Maximum Curvature) to a proposed multi-feature ensemble SVM. The proposed SVM uses HOG, LBP and Gabor features. In all cases, the ensemble achieves a mean EER of 4.0 %, TAR FAR=10-3 =72.3%, and AUC= 0.963, which is on par with Kumar Gabor (EER 8.8%), MC (EER 13.1%), and IUWT-SAD (EER 16.4%). Performance is consistent in response to temperature changes. There is only slight performance deterioration in the presence of surface contaminants (dust, lotion). Calibration analysis indicates low error (ECE < 0.02, Brier < 0.03). A throughput of up to 12 images per second is achieved with the proposed feature pipeline. The results demonstrate that ensemble fusion is highly effective for condition-resilient palm vein recognition. The new dataset offers a good reference point for estimating real-world resilience beyond laboratory tests.

Keywords

Palm Vein Recognition Biometrics Vascular Patterns Feature Extraction Ensemble SVM Contactless Authentication Dataset Evaluation

×
Article Processing Charges

Journal of Innovative Image Processing (jiip) is an open access journal. When a paper is accepted for publication, authors are required to pay Article Processing Charges (APCs) to cover its editorial and production costs. The APC for each submission is 400 USD. There are no additional charges based on color, length, figures, or other elements.

Category Fee
Article Access Charge 30 USD
Article Processing Charge 400 USD
Annual Subscription Fee 200 USD
Payment Gateway
Paypal: click here
Townscript: click here
Razorpay: click here
After payment,
please send an email to irojournals.contact@gmail.com / journals@iroglobal.com requesting article access.
Subscription form: click here