Abstract
Contactless hand biometrics has emerged as an alternative to traditional biometric characteristics, e.g., fingerprint or face, as it possesses distinctive properties that are of interest in forensic investigations. As a result, several hand-based recognition techniques have been proposed with the aim of identifying both wanted criminals and missing victims. The great success of deep neural networks and their application in a variety of computer vision and pattern recognition tasks has led to hand-based algorithms achieving high identification performance on controlled images with few variations in, e.g., background context and hand gestures. This article provides a comprehensive review of the scientific literature focused on contactless hand biometrics together with an in-depth analysis of the identification performance of freely available deep learning-based hand recognition systems under various scenarios. Based on the performance benchmark, the relevant technical considerations and trade-offs of state-of-the-art methods are discussed, as well as further topics related to this research field.
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Details
; Zyla, Kacper Marek 2 ; Rathgeb, Christian 1 ; Fischer, Daniel 1 1 Hochschule Darmstadt, da/sec - Biometrics and Security Research Group, Darmstadt, Germany (GRID:grid.449026.d) (ISNI:0000 0000 8906 027X)
2 Technical University of Denmark, Computer Science, Copenhagen, Denmark (GRID:grid.5170.3) (ISNI:0000 0001 2181 8870)





