A Comparative Study of Cross-Device Finger Vein Recognition Using Classical and Deep Learning Approaches

Finger vein recognition is gaining popularity in the field of biometrics, yet the inter-operability of finger vein patterns has received limited attention. This study aims to fill this gap by introducing a cross-device finger vein dataset and evaluating the performance of finger vein recognition acr...

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Veröffentlicht in:IET biometrics 2024-03, Vol.2024, p.1-21
Hauptverfasser: Arıcan, Tuğçe, Veldhuis, Raymond, Spreeuwers, Luuk, Bergeron, Loïc, Busch, Christoph, Jalilian, Ehsaneddin, Kauba, Christof, Kirchgasser, Simon, Marcel, Sébastien, Prommegger, Bernhard, Raja, Kiran, Ramachandra, Raghavendra, Uhl, Andreas
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Sprache:eng
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Zusammenfassung:Finger vein recognition is gaining popularity in the field of biometrics, yet the inter-operability of finger vein patterns has received limited attention. This study aims to fill this gap by introducing a cross-device finger vein dataset and evaluating the performance of finger vein recognition across devices using a classical method, a convolutional neural network, and our proposed patch-based convolutional auto-encoder (CAE). The findings emphasise the importance of standardisation of finger vein recognition, similar to that of fingerprints or irises, crucial for achieving inter-operability. Despite the inherent challenges of cross-device recognition, the proposed CAE architecture in this study demonstrates promising results in finger vein recognition, particularly in the context of cross-device comparisons.
ISSN:2047-4938
2047-4946
DOI:10.1049/2024/3236602