A deep ensemble learning method for single finger-vein identification

Front Neurorobot. 2023 Jan 11:16:1065099. doi: 10.3389/fnbot.2022.1065099. eCollection 2022.

Abstract

Finger-vein biometrics has been extensively investigated for personal verification. Single sample per person (SSPP) finger-vein recognition is one of the open issues in finger-vein recognition. Despite recent advances in deep neural networks for finger-vein recognition, current approaches depend on a large number of training data. However, they lack the robustness of extracting robust and discriminative finger-vein features from a single training image sample. A deep ensemble learning method is proposed to solve the SSPP finger-vein recognition in this article. In the proposed method, multiple feature maps were generated from an input finger-vein image, based on various independent deep learning-based classifiers. A shared learning scheme is investigated among classifiers to improve their feature representation captivity. The learning speed of weak classifiers is also adjusted to achieve the simultaneously best performance. A deep learning model is proposed by an ensemble of all these adjusted classifiers. The proposed method is tested with two public finger vein databases. The result shows that the proposed approach has a distinct advantage over all the other tested popular solutions for the SSPP problem.

Keywords: deep learning; ensemble learning; finger-vein recognition; pattern recognition; single sample per person.

Grants and funding

This work was supported by the National Natural Science Foundation of China under (Grant 61976030), the Scientific and Technological Research Program of Chongqing Municipal Education Commission under (Grants KJQN202000841 and KJQN201900848), the funds for creative research groups of Chongqing Municipal Education Commission under (Grant CXQT21034), Chongqing Talent Program under (Grant CQYC201903246), the Fellowship of China Post-Doctoral Science Foundation under (Grant 59676651E), the Science Fund for Creative Research Groups of Chongqing Universities under (Grant CXQT21034), the Chongqing Technology and Business University Research Funds (413/950322019 and 413/1952037), and the Scientific Innovation 2030 Major Project for New Generation of AI under (Grant No. 2020AAA0107300).