首页|Enhance the Performance of Directional Feature-based Palmprint Recognition by Directional Response Stability Measurement

Enhance the Performance of Directional Feature-based Palmprint Recognition by Directional Response Stability Measurement

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Palmprint recognition is an emerging biometrics technology that has attracted increasing attention in recent years.Many palmprint recognition methods have been proposed,including traditional methods and deep learning-based methods.Among the tradi-tional methods,the methods based on directional features are mainstream because they have high recognition rates and are robust to il-lumination changes and small noises.However,to date,in these methods,the stability of the palmprint directional response has not been deeply studied.In this paper,we analyse the problem of directional response instability in palmprint recognition methods based on dir-ectional feature.We then propose a novel palmprint directional response stability measurement(DRSM)to judge the stability of the directional feature of each pixel.After filtering the palmprint image with the filter bank,we design DRSM according to the relationship between the maximum response value and other response values for each pixel.Using DRSM,we can judge those pixels with unstable directional response and use a specially designed encoding mode related to a specific method.We insert the DRSM mechanism into sev-en classical methods based on directional feature,and conduct many experiments on six public palmprint databases.The experimental results show that the DRSM mechanism can effectively improve the performance of these methods.In the field of palmprint recognition,this work is the first in-depth study on the stability of the palmprint directional response,so this paper has strong reference value for re-search on palmprint recognition methods based on directional features.

Biometricspalmprint recognitiondirectional response stabilitydirectional coding-based methodsdirectional feature

Haitao Wang、Wei Jia

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School of Computer Science and Information Engineering,Hefei University of Technology,Hefei 230009,China

National Science Foundation of China

62076086

2024

机器智能研究(英文)
中国科学院自动化所

机器智能研究(英文)

CSTPCDEI
影响因子:0.49
ISSN:2731-538X
年,卷(期):2024.21(3)
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