一种改进的基于gan的图像绘制方法

Ngoc-Thao Nguyen, Bang-Dang Pham, Thanh-Sang Thai, Minh-Thanh Nguyen
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引用次数: 0

摘要

图像补绘旨在填补图像中缺失的区域,有效地服务于历史图像修复或照片编辑等图像处理过程。这项任务是具有挑战性的,因为完成时必须保持整个图像的视觉连贯性。本文的贡献在于一个由多个生成器和鉴别器组成的架构,以获得更好的喷漆效果。两个生成器依次工作,其中第一个模型粗略重建缺失区域,第二个模型根据给定的先验知识完成这些区域。同时,鉴别器阶段包括两个平行的,全球和本地分支,允许更显著的歧视。我们进一步建议使用扩张性卷积,它可以有效地拓宽感受野,并使用WGAN-GP来缓解梯度消失。在标准数据集上进行的定量和定性实验都表明,我们的方法比目前的基线提供了更可信的结果。
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An improved GAN-based approach for image inpainting
Image inpainting aims to complete missing regions in images, effectively serves imagery processes like historical image restoration or photo editing. This task is challenging because the completion should maintain visual coherence throughout the image. This paper’s contribution lies in an architecture that comprises multiple generators and discriminators to achieve better inpainting results. The two generators work sequentially, in which the first model coarsely reconstructs the missing regions, and the latter completes these regions following the given prior knowledge. Meanwhile, the discriminator stage includes two parallel, global and local branches, allowing for more significant discrimination. We further suggest using dilated convolution, which effectively broadens the receptive field, and WGAN-GP to mitigate gradient vanishing. Both quantitative and qualitative experiments on standard datasets have shown that our method provides more plausible results than current baselines.
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