Cross-Domain Identification for Thermal-to-Visible Face Recognition

Cedric Nimpa Fondje, Shuowen Hu, Nathan J. Short, B. Riggan
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引用次数: 17

Abstract

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.
热-可见人脸识别的跨域识别
领域自适应的最新进展,特别是那些应用于异质面部识别的领域,通常依赖于限制性欧几里得损失函数(例如L2范数),当来自两个不同领域(例如,可见和热)的图像被共同注册和时间同步时,该函数表现最佳。本文提出了一种新的领域自适应框架,该框架将新的特征映射子网络与基于改进网络架构(如VGG16或Resnet50)的现有深度特征模型相结合。该框架通过引入新的跨域恒等式和域不变性损失函数对热可见人脸识别进行了优化,减轻了对精确共配和同步图像的要求。我们对所使用的特征和损失函数进行了广泛的分析,并将所提出的领域自适应框架与最先进的基于特征的领域自适应模型进行了比较,该模型基于一个复杂的数据集,该数据集包含在不同距离、姿势和表情下收集的面部图像。此外,我们分析了所提出的框架在更具挑战性的任务中的可行性,例如非正面热到可见的人脸识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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