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Heterogeneous Face Recognition with CNNs

机译:异构面部识别用CNNS

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Heterogeneous face recognition aims to recognize faces across different sensor modalities. Typically, gallery images are normal visible spectrum images, and probe images are infrared images or sketches. Recently significant improvements in visible spectrum face recognition have been obtained by CNNs learned from very large training datasets. In this paper, we are interested in the question to what extent the features from a CNN pre-trained on visible spectrum face images can be used to perform heterogeneous face recognition. We explore different metric learning strategies to reduce the discrepancies between the different modalities. Experimental results show that we can use CNNs trained on visible spectrum images to obtain results that are on par or improve over the state-of-the-art for heterogeneous recognition with near-infrared images and sketches.
机译:异构面识别旨在识别不同传感器方式的面。通常,图库图像是正常的可见光谱图像,探测图像是红外图像或草图。最近通过来自非常大的训练数据集学习的CNNS获得了可见光面识别的显着改进。在本文中,我们对问题感兴趣的是,在可见光谱面部图像上预先培训的CNN的特征可以用于执行异构面部识别。我们探索不同的公制学习策略,以减少不同模式之间的差异。实验结果表明,我们可以使用在可见光谱图像上培训的CNN,以获得对具有近红外图像和草图的异构识别的原始识别的结果或改善的结果。

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