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Pre- and Post-processing on Generative Adversarial Networks for Old Photos Restoration: A Case Study

机译:对旧照片恢复的生成对抗网络的预处理和后处理:一个案例研究

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Old historical images are an invaluable source of knowledge that allows people to learn about past events and, in general, the form of the world in the past. In the case of townscapes, the photos may depict specific details as building appearance prior to their reconstruction, enlargement or demolition, or even former appearance of cities (buildings, inhabitants, transportation, among others). In this sense, more and better details of the image lead to an exact representation of a city in a given time. Generative Adversarial Networks (GANs) are a category of deep artificial neural networks (DANNs) that show great success in generating realistic characteristics into image, video and voice data. This work explores how the pre- and post-processing techniques influence the overall effectiveness of GANs-based techniques for restoring and coloring old photos. Pre- and post-processing based on traditional image processing methods preserve and enhance the information contained in old photographs; however, their effectiveness is limited by the amount of information retained in the original photograph. On the other hand, GANs-based techniques offer the ability to increase the amount, of information and thus boost the effectiveness of traditional methods. Experiments are performed referring to the old photos of Quito's city. The preliminary results show that pre- and post-processing algorithms are essential even in artificial intelligence approaches, eliminating undesirables artifacts and increasing visual quality.
机译:旧的历史形象是一种宝贵的知识来源,允许人们了解过去的事件,并且通常是过去世界的形式。在镇展场的情况下,照片可以将具体细节描述为在重建,扩大或拆除之前的建筑物外观,甚至是城市的前面的外观(建筑物,居民,运输等)。从这个意义上讲,图像的越来越好细节导致在给定时间内的一个城市的精确表示。生成的对策网络(GANS)是一类深度人工神经网络(Danns),其在为图像,视频和语音数据中产生现实特征,表现出巨大成功。这项工作探讨了预处理和后处理技术如何影响基于GANS的恢复和着色旧照片的整体效率。基于传统图像处理方法的预处理,保护和增强旧照片中包含的信息;但是,它们的有效性受到原始照片中保留的信息量的限制。另一方面,基于GAN的技术提供了增加信息的能力,并因此提高传统方法的有效性。实验是指基多城市的旧照片。初步结果表明,即使在人工智能方法中,也是必需的后处理算法,消除了不期望的伪影和增加视觉质量。

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