Semantic image inpainting with boundary equilibrium GAN

Yuhang Jia, Yan Xing, Cheng Peng, Chao Jing, Congzhang Shao, Yifan Wang
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引用次数: 1

Abstract

Recently, due to the vigorous development of deep learning, many methods in the field of image inpainting have been proposed which are different from the traditional image inpainting methods. This paper uses the high-quality image generation technology of BEGAN to complete the image inpainting task. Firstly, the image generation model is obtained by pretraining the generator and discriminator of BEGAN. Then this paper redesigns the loss function and finds the generated image suitable for the image inpainting task via gradient descent algorithm. By using the information contained in the undamaged part of the original image to be repaired, the BEGAN model can generate an image that is closest to the original image. Finally, the generated image is used to fill the lost area of the original image to be repaired, and the image inpainting task is completed. This paper confirms the validity of the method through the experiments on the CelebA and LFW datasets.
基于边界平衡的GAN语义图像绘制
近年来,由于深度学习的蓬勃发展,在图像绘制领域提出了许多不同于传统图像绘制方法的方法。本文采用高质量的图像生成技术来完成图像绘制任务。首先,通过对begin的生成器和鉴别器进行预训练,得到图像生成模型;然后重新设计损失函数,并通过梯度下降算法找到适合图像补漆任务的生成图像。begin模型利用待修复原始图像中未损坏部分所包含的信息,生成最接近原始图像的图像。最后,用生成的图像填充待修复原图像的缺失区域,完成图像补漆任务。本文通过在CelebA和LFW数据集上的实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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