A Bidirectional Conversion Network for Cross-Spectral Face Recognition
Zhicheng Cao, Jiaxuan Zhang, Liaojun Pang

TL;DR
This paper introduces a bidirectional cross-spectral face recognition framework using a GAN-based conversion network, effectively bridging the gap between visible and IR images and improving recognition accuracy in challenging environments.
Contribution
The paper proposes a novel bidirectional conversion network with adaptive fusion and identity preservation modules for enhanced cross-spectral face recognition.
Findings
Outperforms state-of-the-art methods on TINDERS and CASIA datasets.
Self Adaptive Weighted Fusion improves recognition results over traditional methods.
The proposed network effectively reduces cross-spectral recognition to intra-spectral recognition.
Abstract
Face recognition in the infrared (IR) band has become an important supplement to visible light face recognition due to its advantages of independent background light, strong penetration, ability of imaging under harsh environments such as nighttime, rain and fog. However, cross-spectral face recognition (i.e., VIS to IR) is very challenging due to the dramatic difference between the visible light and IR imageries as well as the lack of paired training data. This paper proposes a framework of bidirectional cross-spectral conversion (BCSC-GAN) between the heterogeneous face images, and designs an adaptive weighted fusion mechanism based on information fusion theory. The network reduces the cross-spectral recognition problem into an intra-spectral problem, and improves performance by fusing bidirectional information. Specifically, a face identity retaining module (IRM) is introduced with…
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Taxonomy
TopicsFace and Expression Recognition · Remote-Sensing Image Classification
