Physics-Driven Spectrum-Consistent Federated Learning for Palmprint Verification
Ziyuan Yang, Andrew Beng Jin Teoh, Bob Zhang, Lu Leng, Yi, Zhang

TL;DR
This paper introduces PSFed-Palm, a physics-driven federated learning method that enhances cross-spectrum palmprint verification while preserving privacy, by leveraging physical properties of spectral data and spectrum consistency constraints.
Contribution
The paper proposes a novel spectrum-consistent federated learning framework for palmprint verification that exploits physical spectral properties and maintains privacy without sharing raw data.
Findings
Effective cross-spectrum palmprint verification demonstrated
Maintains privacy by avoiding data sharing
Performs well with limited training data
Abstract
Palmprint as biometrics has gained increasing attention recently due to its discriminative ability and robustness. However, existing methods mainly improve palmprint verification within one spectrum, which is challenging to verify across different spectrums. Additionally, in distributed server-client-based deployment, palmprint verification systems predominantly necessitate clients to transmit private data for model training on the centralized server, thereby engendering privacy apprehensions. To alleviate the above issues, in this paper, we propose a physics-driven spectrum-consistent federated learning method for palmprint verification, dubbed as PSFed-Palm. PSFed-Palm draws upon the inherent physical properties of distinct wavelength spectrums, wherein images acquired under similar wavelengths display heightened resemblances. Our approach first partitions clients into short- and…
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Taxonomy
TopicsBiometric Identification and Security · Face recognition and analysis
MethodsALIGN
