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CSGAN: Cyclic-Synthesized Generative Adversarial Networks for image-to-image transformation

机译:CSGAN:用于图像到图像转换的循环合成的生成对抗网络

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摘要

The primary motivation of image-to-image transformation is to convert an image of one domain to another domain. The Generative Adversarial Network (GAN) is the recent trend for image-to-image transformation. The existing GAN models suffer due to the lack of utilization of proper synthesization objectives. In this paper, we propose a new Cyclic-Synthesized Generative Adversarial Networks (CSGAN) for the development of expert and intelligent systems for image-to-image transformation. The proposed CSGAN uses a new objective function based on the proposed cyclic-synthesized loss between the synthesized image of one domain and cycled image of another domain. The proposed CSGAN enforces the mapping from one domain to another domain more accurately by limiting the scope of redundant transformation with the help of the cyclic-synthesized loss. The performance of the proposed CSGAN is evaluated on four benchmark image-to-image transformation datasets, including CUHK Face dataset, WHU-IIP Thermal-Visible Face Dataset, CMP Facades dataset, and NYU-Depth Dataset. The results are computed using the widely used evaluation metrics such as MSE, SSIM, PSNR, and LPIPS. The experimental results of the proposed CSGAN approach are compared with the latest state-of-the-art approaches, such as GAN, Pix2Pix, DualGAN, CycleGAN, and PS2GAN. The proposed CSGAN technique outperforms all the methods over CUHK dataset, WHU-IIP dataset, NYU-Depth dataset, and exhibits promising and comparable performance over Facades dataset in terms of both qualitative and quantitative measures. The code is available at https://github.com/KishanKancharagunta/CSGAN.
机译:图像到图像转换的主要动机是将一个域的图像转换为另一个域。生成的对抗网络(GaN)是近期图像到图像转换的趋势。现有的GaN模型由于缺乏适当的合成目标而受到影响。在本文中,我们提出了一种新的循环合成的生成对抗网络(CSGAN),用于开发用于图像到图像转换的专家和智能系统。所提出的CSANG基于在一个域的合成图像和另一个领域的循环图像之间的拟议的循环综合损耗来使用新的目标函数。通过在循环合成损耗的帮助下限制冗余变换的范围,建议的CSGAN将从一个域从一个域映射到另一个域。所提出的CSGANG的性能在四个基准测试图像到图像转换数据集中进行评估,包括CUHK面部数据集,WHU-IIP热敏可见面部数据集,CMP移位数据集和NYU深入数据集。结果是使用诸如MSE,SSIM,PSNR和LPIP之类的广泛使用的评估度量来计算的结果。拟议的CSANAG方法的实验结果与最新的最新方法进行比较,例如GaN,Pix2pix,Dualgan,Cleargan和PS2gan。所提出的CSGAN技术优于CUHK数据集,WHU-IIP数据集,NYU深入数据集,在既有定性和定量措施方面展示了对外墙数据集的有希望和可比性的性能。代码可在https://github.com/kishankancharagunta/csgan获得。

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