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Polarimetric Thermal to Visible Face Verification via Attribute Preserved Synthesis

机译:Polarimetric热量通过属性保存的合成可见脸部验证

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Thermal to visible face verification is a challenging problem due to the large domain discrepancy between the modalities. Existing approaches either attempt to synthesize visible faces from thermal faces or extract robust features from these modalities for cross-modal matching. In this paper, we take a different approach in which we make use of the attributes extracted from the visible image to synthesize the attribute-preserved visible image from the input thermal image for cross-modal matching. A pre-trained VGG-Face network is used to extract the attributes from the visible image. Then, a novel Attribute Preserved Generative Adversarial Network (AP-GAN) is proposed to synthesize the visible image from the thermal image guided by the extracted attributes. Finally, a deep network is used to extract features from the synthesized image and the input visible image for verification. Extensive experiments on the ARL Polarimetric face dataset show that the proposed method achieves significant improvements over the state-of-the-art methods.
机译:由于模态之间的域之间的域差异,热到可见面部验证是一个具有挑战性的问题。现有方法尝试从热面料从热面上合成可见面或从这些模态提取鲁棒特征以进行跨模型匹配。在本文中,我们采用不同的方法,其中我们利用了从可见图像中提取的属性来合成来自输入热图像的属性保存的可见图像以进行跨模型匹配。预先训练的VGG-Face网络用于从可见图像中提取属性。然后,提出了一种新的属性保存的生成的对抗网络(AP-GaN)来将可见图像从提取的属性引导的热图像合成。最后,深网络用于从合成图像和输入可见图像中提取特征以进行验证。在ARL Polarimetric面对数据集上进行广泛的实验表明,该方法通过最先进的方法实现了显着的改进。

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