Cross-Domain Identification for Thermal-to-Visible Face Recognition
2020 IEEE International Joint Conference on Biometrics (IJCB)(2020)
摘要
Recent advances in domain adaptation, especially those applied to heterogeneous facial recognition, typically rely upon restrictive Euclidean loss functions (e.g., L2 norm) which perform best when images from two different domains (e.g., visible and thermal) are co-registered and temporally synchronized. This paper proposes a novel domain adaptation framework that combines a new feature mapping sub-network with existing deep feature models, which are based on modified network architectures (e.g., VGG16 or Resnet50). This framework is optimized by introducing new cross-domain identity and domain invariance lossfunctions for thermal-to-visible face recognition, which alleviates the requirement for precisely co-registered and synchronized imagery. We provide extensive analysis of both features and loss functions used, and compare the proposed domain adaptation framework with state-of-the-art feature based domain adaptation models on a difficult dataset containing facial imagery collected at varying ranges, poses, and expressions. Moreover, we analyze the viability of the proposed framework for more challenging tasks, such as non-frontal thermal-to-visible face recognition.
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关键词
thermal-to-visible face recognition,cross-domain identification,heterogeneous facial recognition,restrictive Euclidean loss functions,domain adaptation framework,feature mapping sub-network,deep feature models,cross-domain identity,domain invariance lossfunctions,state-of-the-art feature based domain adaptation models
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