A Novel Generative Image Inpainting Model with Dense Gated Convolutional Network

Xiaoxuan Ma, Yibo Deng, Lei Zhang, Zhiwen Li
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引用次数: 1

Abstract

Damaged image inpainting is one of the hottest research fields in computer image processing. The development of deep learning, especially Convolutional Neural Network (CNN), has significantly enhanced the effect of image inpainting. However, the direct connection between convolution layers may increase the risk of gradient disappearance or overfitting during training process. In addition, pixel artifacts or visual inconsistencies may occur if the damaged area is inpainted directly. To solve the above problems, we propose a novel Dense Gated Convolutional Network (DGCN) for generative image inpainting by modifying the gated convolutional network structure in this paper. Firstly, Holistically-nested edge detector (HED) is utilized to predict the edge information of the missing areas to assist the subsequent inpainting task to reduce the generation of artifacts. Then, dense connections are added to the generative network to reduce the network parameters while reducing the risk of instability in the training process. Finally, the experimental results on CelebA and Places2 datasets show that the proposed model achieves better inpainting results in terms of PSNR, SSIM and visual effects compared with other classical image inpainting models. DGCN has the common advantages of gated convolution and dense connection, which can reduce network parameters and improve the inpainting effect of the network.
一种基于密集门控卷积网络的生成式图像补绘模型
损伤图像的修复是计算机图像处理领域的研究热点之一。深度学习,尤其是卷积神经网络(CNN)的发展,极大地增强了图像补图的效果。然而,卷积层之间的直接连接可能会增加训练过程中梯度消失或过拟合的风险。此外,如果直接涂入受损区域,可能会出现像素伪像或视觉不一致。为了解决上述问题,本文通过修改门控卷积网络结构,提出了一种用于生成图像绘制的新型密集门控卷积网络(DGCN)。首先,利用整体嵌套边缘检测器(HED)预测缺失区域的边缘信息,辅助后续的补漆任务,减少伪影的产生;然后,在生成网络中加入密集连接,以减少网络参数,同时降低训练过程中不稳定的风险。最后,在CelebA和Places2数据集上的实验结果表明,与其他经典图像喷漆模型相比,该模型在PSNR、SSIM和视觉效果方面都取得了更好的喷漆效果。DGCN具有门控卷积和密集连接的共同优点,可以减少网络参数,提高网络的涂漆效果。
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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