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Tile Art Image Generation Using Conditional Generative Adversarial Networks

机译:瓷砖艺术图像生成使用条件生成的对抗网络

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Image-to-image translation is a task of mapping an image in one domain to a corresponding image in another domain. The task includes various types of problems such as super-resolution, colorization, and artistic style transfer. In recent years, with the advent of deep learning, the technology has been rapidly advanced. The main purpose of this paper is to propose a tile art image generation method using machine learning approach based on conditional generative adversarial networks. To make the training data set of tile art images, we adopted a square-pointillism image generation method using the greedy approach. After training, the proposed network can generate tile art images that have the structure of tiles and reproduce the original images well. As regards generating time, the greedy approach takes 1322 seconds to generate tile art image of size 4096×3072, while the proposed machine learning approach takes 0.593 seconds.
机译:图像到图像转换是将一个域中的图像映射到另一个域中的对应图像的任务。任务包括各种类型的问题,例如超分辨率,着色和艺术风格传输。近年来,随着深度学习的出现,该技术已迅速推进。本文的主要目的是提出使用基于条件生成的对抗网络的机器学习方法的瓦片艺术图像生成方法。为了使培训数据集的瓷砖艺术图像,我们采用了一种使用贪婪方法的方射线图像生成方法。在培训之后,所提出的网络可以生成具有瓷砖结构并良好再现原始图像的瓦片艺术图像。关于生成时间,贪婪的方法需要1322秒才能产生尺寸4096×3072的瓷砖艺术图像,而所提出的机器学习方法需要0.593秒。

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