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GANmera: Reproducing Aesthetically Pleasing Photographs Using Deep Adversarial Networks

机译:GANmera:使用深度对抗性网络复制美观的照片

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Generative adversarial networks (GANs) have become increasingly popular in recent years owing to its ability to synthesize and transfer. The image enhancement task can also be modeled as an image-to-image translation problem. In this paper, we propose GANmera, a deep adversarial network which is capable of performing aesthetically-driven enhancement of photographs. The network adopts a 2-way GAN architecture and is semi-supervised with aesthetic-based binary labels (good and bad). The network is trained with unpaired image sets, hence eliminating the need for strongly supervised before-after pairs. Using CycleGAN as the base architecture, several fine-grained modifications are made to the loss functions, activation functions and resizing schemes, to achieve improved stability in the generator. Two training strategies are devised to produce results with varying aesthetic output. Quantitative evaluation on the recent benchmark MIT-Adobe-5K dataset demonstrate the capability of our method in achieving state-of-the-art PSNR results. We also show qualitatively that the proposed approach produces aesthetically-pleasing images. This work is a shortlisted submission to the CVPR 2019 NTIRE Image Enhancement Challenge.
机译:生成对抗网络(GAN)近年来由于其综合和转移能力而变得越来越流行。图像增强任务也可以建模为图像到图像的转换问题。在本文中,我们提出了GANmera,这是一个深具对抗性的网络,能够执行审美驱动的照片增强。该网络采用2路GAN架构,并通过基于美学的二进制标签(好和坏)进行半监督。该网络使用未配对的图像集进行训练,因此消除了对需要严格监督的前后配对的需求。使用CycleGAN作为基础架构,对损失函数,激活函数和大小调整方案进行了一些细粒度的修改,以提高生成器的稳定性。设计了两种训练策略以产生具有不同美学输出的结果。对最近的基准MIT-Adobe-5K数据集的定量评估表明,我们的方法具有实现最新的PSNR结果的能力。我们还定性地表明,所提出的方法可以产生美观的图像。这项工作是CVPR 2019 NTIRE Image Enhancement Challenge的入围作品。

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