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Learning Representations for High-Dynamic-Range Image Color Transfer in a Self-Supervised Way

机译:以自我监督方式学习高动态图像颜色传输的表示

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Reference-based color transfer between images has been a fundamental function in image editing. However, existing approaches pay less attention to high-dynamic-range (HDR) images. It is worth noting that designing an appropriate representation for HDR images to achieve satisfying color transfer is challenging. In this paper, we propose an innovative high-dynamic-range image color transfer generative adversarial network (HDRCTGAN) to encode the original image into fine representations that allow transfer of the color of the reference image to the target image. We propose to learn fine representations through a generative adversarial network (GAN) in a self-supervised way. Particularly, the proposed method is self-supervised learning that requires only unlabeled HDR images instead of supervised learning that requires lots of ground truth pairs. HDRCTGAN consists of a generator to transfer the color of the reference image to the target image over the feature domain and a discriminator to suppress the artifacts caused by the generator. We also design a loss function to ensure that HDRCTGAN possesses two required properties: (a) high fidelity and (b) self-identity. The proposed approach yields a pleasing visual result. We have carried out HDR specific evaluations including both objective quantitative experiments with HDR metrics and subjective user studies operated on HDR display devices to demonstrate the effectiveness of our method. Furthermore, we have verified the applicability of the proposed approach to several applications, such as color transfer of HDR images captured by smartphones, color transfer of fabric images, and reference-based grayscale image colorization.
机译:图像之间的基于参考的颜色传输是图像编辑中的基本函数。然而,现有方法不太注意高动态范围(HDR)图像。值得注意的是,设计适当的HDR图像表示达到满足颜色转移是具有挑战性的。在本文中,我们提出了一种创新的高动态图像颜色转移生成的对抗性网络(HDRCTGAN)来将原始图像编码成微量表示,允许将参考图像的颜色传送到目标图像。我们建议以自我监督的方式通过生成的对抗网络(GAN)学习良好的陈述。特别是,所提出的方法是自我监督的学习,只需要未标记的HDR图像,而不是需要大量地面真相对的监督学习。 HDRCTGAN由发电机组成,以通过特征域和鉴别器将参考图像的颜色传送到目标图像,以抑制由发电机引起的伪像。我们还设计了一个损失函数,以确保HDRCTGAN拥有两个所需的特性:(a)高保真和(b)自我身份。该方法产生了令人愉悦的视觉结果。我们已经开展了HDR特定评估,包括对HDR指标的客观定量实验,以及在HDR显示设备上运行的主观用户研究,以证明我们方法的有效性。此外,我们已经验证了所提出的方法对若干应用的适用性,例如由智能手机捕获的HDR图像的颜色传输,织物图像的颜色传输和基于参考的灰度图像着色。

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