Journal Article10.1109/IJCB54206.2022.10007975
Row-sparsity Binary Feature Learning for Open-set Palmprint Recognition
Shuyi Li,Ruijun Ma,Jianhang Zhou,Bo Zhang +3 more
- 10 Oct 2022
pp 1-8
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TL;DR: Wang et al. as discussed by the authors proposed a row-sparsity binary feature learning (Rs-BFL) method to adaptively learn and encode palmprint features for open-set palmprint recognition.
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Abstract: Binary feature representation methods have received increasing attention due to their high efficiency and great robustness to illumination variation. However, most of them are hand-designed feature descriptors that generally require much prior knowledge in their design. This paper introduces a Row-sparsity Binary Feature Learning (Rs-BFL) method to adaptively learn and encode palmprint features for open-set palmprint recognition. Given the training palmprint images, RsBFL jointly learns a bank of linear projection functions that transform the informative texture features into discriminative binary codes. Afterwards, we calculate the block-wise histograms of each feature map and concatenate them as the final feature representation. Based on the pre-trained projection matrix, we mapped the palmprint texture features of the test samples into binary features for matching. For RsBFL, we enforce three criteria: 1) the quantization error between the projected real-valued features and the binary features is minimized, at the same time, the projection noise is minimized; 2) the latent label semantic information is utilized to minimize the distance of the within-class samples and simultaneously maximize the distance of the between-class samples; 3) the $l_{2,1}$ norm is used to make the projection matrix to extract more discriminative features. Extensive experimental results on two publicly accessible palmprint datasets demonstrated the effectiveness and powerful learning capability of the proposed method.
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Citations
Multi-Scale Parallel Hybrid Network for Palmprint Recognition
Hao Yang,Shuyi Li,Yuqi Wang +2 more
- 06 Apr 2025
TL;DR: This study proposes MSPHNet, a multi-scale network integrating local and global features for palmprint recognition, using a Parallel Hybrid Feature Extraction Block and Comprehensive Attention Block to enhance feature extraction and address uneven texture distribution.
Deep Learning in Palmprint Recognition-A Comprehensive Survey
Chengrui Gao,Z. W. Yang,Wei Jia,Lu Leng,Bob Zhang,Andrew Beng Jin Teoh +5 more
- 02 Jan 2025
TL;DR: This comprehensive survey reviews recent advancements in deep learning-based palmprint recognition, covering key tasks, challenges, and opportunities, providing a valuable resource for researchers to stay updated on cutting-edge technologies and drive innovation in palmprint recognition.
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