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Modality Agnostic Heterogeneous Face Recognition with Switch Style Modulators

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Heterogeneous Face Recognition (HFR) systems aim to enhance the capability of face recognition in challenging cross-modal authentication scenarios. However, the significant domain gap between the source and target modalities poses a considerable challenge for cross-domain matching. Existing literature primarily focuses on developing HFR approaches for specific pairs of face modalities, necessitating the explicit training of models for each source-target combination. In this work, we introduce a novel framework designed to train a modality-agnostic HFR method capable of handling multiple modalities during inference, all without explicit knowledge of the target modality labels. We achieve this by implementing a computationally efficient automatic routing mechanism called Switch Style Modulation Blocks (SSMB) that trains various domain expert modulators which transform the feature maps adaptively reducing the domain gap. Our proposed SSMB can be trained end-to-end and seamlessly integrated into pre-trained face recognition models, transforming them into modality-agnostic HFR models. We have performed extensive evaluations on HFR benchmark datasets to demonstrate its effectiveness. The source code and protocols will be made publicly available.

Anjith George, Sebastien Marcel• 2024

Related benchmarks

TaskDatasetResultRank
Face RecognitionTufts Face dataset VIS-Thermal protocol
Rank-1 Accuracy78.46
10
Sketch-to-Photo Face RecognitionCUFSF
Rank-1 Accuracy81.67
8
Heterogeneous Face RecognitionModel Complexity
GFLOPs24.2
8
Face RecognitionSCFace (far protocol)
AUC98.77
7
Heterogeneous Face RecognitionMCXFace VIS-UNIVERSAL protocol
AUC99.7
5
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