Deep Cross-View Reconstruction GAN Based on Correlated Subspace for Multi-View Transformation

Jian-Xun Mi;Junchang He;Weisheng Li
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Abstract

In scenarios where identifying face information in the visible spectrum (VIS) is challenging due to poor lighting conditions, the use of near-infrared (NIR) and thermal (TH) cameras can provide viable alternatives. However, the unique data distribution of images captured by these cameras compared to VIS images presents challenges in matching face identities. To address these challenges, we propose a novel image transformation framework. The framework includes feature extraction from the input image, followed by a transformation network that generates target domain images with perceptual fidelity. Additionally, a reconstruction network preserves original information by reconstructing the original domain image from the extracted features. By considering the correlation between features from both domains, our framework utilizes paired data obtained from the same individual. We apply this framework to two well-established image-to-image transformation models, pix2pix and CycleGAN, known as CRC-pix2pix and CRC-CycleGAN respectively. The versatility of our approach allows extension to other models based on pix2pix or CycleGAN architectures. Our models generate high-quality images while preserving the identity information of the original face. Performance evaluation on TFW and BUAA NIR-VIS datasets demonstrates the superiority of our models in terms of generated image face matching and evaluation metrics such as SSIM, MSE, PSNR, and LPIPS. Moreover, we introduce the CQUPT-VIS-TH dataset, which enriches the paired dataset with thermal-visual face data capturing various angles and expressions.
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基于多视角变换相关子空间的深度跨视角重构 GAN
由于光照条件差,在可见光谱(VIS)下识别人脸信息具有挑战性,在这种情况下,使用近红外(NIR)和热像仪(TH)可以提供可行的替代方案。然而,与可见光谱图像相比,这些相机捕捉到的图像数据分布独特,这给人脸身份匹配带来了挑战。为了应对这些挑战,我们提出了一个新颖的图像转换框架。该框架包括从输入图像中提取特征,然后通过转换网络生成具有感知保真度的目标域图像。此外,重建网络通过从提取的特征中重建原始域图像来保留原始信息。通过考虑两个域的特征之间的相关性,我们的框架利用了从同一个人身上获得的配对数据。我们将这一框架应用于两个成熟的图像到图像转换模型,即 pix2pix 和 CycleGAN,分别称为 CRC-pix2pix 和 CRC-CycleGAN。我们的方法用途广泛,可以扩展到基于 pix2pix 或 CycleGAN 架构的其他模型。我们的模型能生成高质量的图像,同时保留原始人脸的身份信息。在 TFW 和 BUAA NIR-VIS 数据集上进行的性能评估表明,我们的模型在生成图像的人脸匹配以及 SSIM、MSE、PSNR 和 LPIPS 等评估指标方面具有优势。此外,我们还引入了 CQUPT-VIS-TH 数据集,该数据集通过捕捉不同角度和表情的热视觉人脸数据丰富了配对数据集。
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