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An Improved Method for Semantic Image Inpainting with GANs: Progressive Inpainting

机译:用GANS的语义图像修正一种改进方法:逐步染色

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摘要

Semantic image inpainting is getting more and more attention due to its increasing usage. Existing methods make inference based on either local data or external information. Generating Adversarial Networks, as a research focus in recent years, has been proven to be useful in inpainting work. One of the most representative is the deep-generative-modelbased approach, which use undamaged images for training and repair the corrupted image with the trained networks. However, thismethod is too dependent on the training process, easily resulting in the completed image blurry in details. In this paper, we propose an improved method named progressive inpainting. With the trained networks, we use back-propagation to find the most appropriate input distribution and use the generator to repair the corrupted image. Instead of repairing the image in one step, we take a pyramid strategy from a lowresolution image to higher one, with the purpose of getting a clear completed image and reducing the reliance on the training process. The advantage of progressive inpainting is that we can predict the general distribution of the corrupted image and then gradually refine the details. Experiment results on two datasets show that our method successfully reconstructs the image and outperforms most existing methods.
机译:由于使用率的增加,语义图像修正是越来越多的关注。现有方法基于本地数据或外部信息进行推理。作为近年来的研究重点,产生对抗性网络已被证明是有助于润肤的工作。最具代表性的之一是深度生成的模型方法,它使用未损坏的图像进行培训和修复培训的网络的损坏图像。然而,这个方法太依赖了训练过程,很容易导致完整的图像模糊细节。在本文中,我们提出了一种称为逐步染色的改进方法。通过训练有素的网络,我们使用反向传播来查找最合适的输入分布,并使用生成器修复损坏的图像。我们在一个步骤中取代了从Lowresolutive Image的金字塔策略以更高的修理,而是获得明确完成的图像并降低对训练过程的依赖性的目的。逐步逼真的优点是我们可以预测损坏的图像的一般分布,然后逐渐细化细节。两个数据集上的实验结果表明,我们的方法成功地重建了图像并优于大多数现有方法。

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