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Bridging the Gap: Heterogeneous Face Recognition with Conditional Adaptive Instance Modulation

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Heterogeneous Face Recognition (HFR) aims to match face images across different domains, such as thermal and visible spectra, expanding the applicability of Face Recognition (FR) systems to challenging scenarios. However, the domain gap and limited availability of large-scale datasets in the target domain make training robust and invariant HFR models from scratch difficult. In this work, we treat different modalities as distinct styles and propose a framework to adapt feature maps, bridging the domain gap. We introduce a novel Conditional Adaptive Instance Modulation (CAIM) module that can be integrated into pre-trained FR networks, transforming them into HFR networks. The CAIM block modulates intermediate feature maps, to adapt the style of the target modality effectively bridging the domain gap. Our proposed method allows for end-to-end training with a minimal number of paired samples. We extensively evaluate our approach on multiple challenging benchmarks, demonstrating superior performance compared to state-of-the-art methods. The source code and protocols for reproducing the findings will be made publicly available.

Anjith George, Sebastien Marcel• 2023

Related benchmarks

TaskDatasetResultRank
Heterogeneous Face RecognitionCASIA NIR-VIS 2.0
Rank-1 Accuracy99.96
15
Face RecognitionPola Thermal (Average)
Rank-1 Accuracy95
12
Face RecognitionTufts Face dataset VIS-Thermal protocol
Rank-1 Accuracy73.07
10
Sketch-to-Photo Face RecognitionCUFSF
Rank-1 Accuracy76.38
8
Heterogeneous Face RecognitionModel Complexity
GFLOPs26.3
8
Face RecognitionSCFace (far protocol)
AUC98.81
7
Heterogeneous Face RecognitionMCXFace VIS-Thermal protocol
AUC98.97
6
Heterogeneous Face RecognitionMCXFace VIS-UNIVERSAL protocol
AUC99.45
5
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