基于生成对抗网络的模式图像生成

M. Mahyoub, S. Abdulhussain, F. Natalia, S. Sudirman, Basheera M. Mahmmod
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引用次数: 0

摘要

抽象图案在纺织和服装工业中非常常用。图案设计是一个设计师每天都需要想出新的、有吸引力的图案的领域。很难找到具有足够创意思维和必要技能的员工来提出新的、看不见的、有吸引力的设计。因此,理想的做法是确定一个流程,允许这些模式在很少或没有人工交互的情况下自行生成。这可以通过使用深度学习模型和技术来实现。生成对抗网络(GANs)是解决这类问题的最新和最有前途的工具之一。在本文中,我们研究了GAN在生成抽象模式中的适用性。我们通过使用两种最流行的GAN(即深度卷积GAN和沃瑟斯坦GAN)生成抽象设计模式来实现这一点。通过使用超参数优化识别训练后表现最好的模型并生成一些输出模式,我们表明Wasserstein GAN优于深度卷积GAN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abstract Pattern Image Generation using Generative Adversarial Networks
Abstract pattern is very commonly used in the textile and fashion industry. Pattern design is an area where designers need to come up with new and attractive patterns every day. It is very difficult to find employees with a sufficient creative mindset and the necessary skills to come up with new unseen attractive designs. Therefore, it would be ideal to identify a process that would allow for these patterns to be generated on their own with little to no human interaction. This can be achieved using deep learning models and techniques. One of the most recent and promising tools to solve this type of problem is Generative Adversarial Networks (GANs). In this paper, we investigate the suitability of GAN in producing abstract patterns. We achieve this by generating abstract design patterns using the two most popular GANs, namely Deep Convolutional GAN and Wasserstein GAN. By identifying the best-performing model after training using hyperparameter optimization and generating some output patterns we show that Wasserstein GAN is superior to Deep Convolutional GAN.
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