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New Inpainting Algorithm Based on Simplified Context Encoders and Multi-Scale Adversarial Network

机译:基于简化上下文编码器和多尺度对抗网络的新修复算法

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Inpainting refers to reconstruct the incomplete image or video via analysing their context, feature of the tailing etc. Convolutional neural network with deep learning is proved to be an effective method to achieve inpainting. However, those algorithms existed now usually have vague and blurry results with huge amount of time to train the models. To address this issue, this article based on the construction of Context Encoders, continue to use the strategy of combining the encoders and generative adversarial networks (GANs), on which we add the global discriminator, consisting of the multi-scale adversarial network with the local discriminator altogether. The local discriminator ensures the local detail while the global discriminator guarantees the global consistency. Comparing with the Context Encoders, this network is simplified by reducing some of the redundant fabric, therefore this network is faster. Meantime, we re-calculate the loss function of the network and train it with the Paris dataset. The results proved that our network can achieve a better performance on street-view pictures than Context Encoders to some extent.
机译:修复是指通过分析不完整的图像或视频的背景,拖尾特征等来重建图像或视频。深度学习的卷积神经网络被证明是实现修复的有效方法。但是,现在存在的那些算法通常结果模糊且模糊,需要大量时间来训练模型。为解决此问题,本文基于上下文编码器的构造,继续使用将编码器与生成对抗网络(GAN)相结合的策略,在该策略上我们添加了全局鉴别器,该鉴别器由多尺度对抗网络与本地标识符。局部标识符保证局部细节,而全局标识符保证全局一致性。与上下文编码器相比,该网络通过减少一些冗余结构得以简化,因此该网络速度更快。同时,我们重新计算网络的损失函数,并使用Paris数据集对其进行训练。结果证明,在某种程度上,我们的网络在街景图片上可以获得比Context Encoders更好的性能。

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