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Ancient mural restoration based on a modified generative adversarial network

机译:基于改进的生成对抗网络的古代壁画恢复

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How to effectively protect ancient murals has become an urgent and important problem. Digital image processing developments have made it possible to repair damaged murals to a certain extent. This study proposes a consistency-enhanced generative adversarial network (GAN) model to repair missing mural areas. First, the convolutional layer from a fully convolutional network (FCN) is used to extract deep image features; then, through deconvolution, the features are mapped to the size of the original image and the repaired image is output, thereby completing the regenerative network. Next, global and local discriminant networks are applied to determine whether the repaired mural image is “authentic” in terms of both the modified and unmodified areas. In adversarial learning, the generative and discriminant network models are optimized to better complete the mural repair. The network introduces a dilated convolution that increases the convolution kernel’s receptive field. Each network convolutional layer joins in the batch standardization (BN) process to accelerate network convergence and increase the number of network layers and adopts a residual module to avoid the vanishing gradient problem and further optimizing the network. Compared with existing mural restoration algorithms, the proposed algorithm increases the peak signal-to-noise ratio (PSNR) by an average of 6–8?dB and increases the structural similarity (SSIM) index by 0.08–0.12. From a visual perspective, this algorithm successfully complements mural images with complex textures and large missing areas; thus, it may contribute to digital restorations of ancient murals.
机译:如何有效保护古代壁画已成为一个紧急和重要的问题。数字图像处理开发使得可以在一定程度上修复损坏的壁画。本研究提出了一种稠度增强的生成对抗网络(GAN)模型来修复缺失的壁饰区域。首先,来自完全卷积网络(FCN)的卷积层用于提取深图像特征;然后,通过去卷积,该特征被映射到原始图像的大小,并且输出修复的图像,从而完成再生网络。接下来,应用全局和局部判别网络以确定修复的壁图像是否是修改和未修改的区域的“真实”。在对抗性学习中,经常和判别网络模型被优化,以更好地完成壁画修复。该网络引入了扩张的卷积,从而增加了卷积核心的接受领域。每个网络卷积层在批量标准化(BN)过程中加速网络收敛并增加网络层的数量,并采用残余模块来避免消失的梯度问题并进一步优化网络。与现有的壁恢复算法相比,所提出的算法将峰值信噪比(PSNR)增加平均为6-8·dB,并将结构相似度(SSIM)指数增加0.08-0.12。从视角来看,该算法成功地将壁画图像与复杂的纹理和大缺失区域补充;因此,它可能有助于古代壁画的数字修复。

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