ARGAN: Fast Converging GAN for Animation Style Transfer

Amirhossein Douzandeh Zenoozi, K. Navi, Babak Majidi
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Abstract

Transformation of real images to the animated image is one of the most challenging tasks in artistic style transfer. In this paper, using a novel architecture for Generative Adversarial Networks (GANs), a faster and more accurate result for style transfer is achieved. There are three common problems regarding animation style transfer. First, the original content of an image is lost during the generation of new images by the network. Second, the generated image does not have an apparent animated style. Finally, the networks are not fast enough, and they require a large amount of memory to process the images. In this paper, ARGAN, a lightweight and fast GAN network for animation style transfer, is proposed. To enhance the quality of the output images, three loss functions related to grayscale style, content style, and reconstruction of the color spectrum in each image are proposed. Also, the training phase of this method does not require paired data. The proposed method transforms real-world images into animated style images significantly faster than similar methods.
用于动画风格转换的快速收敛GAN
真实图像到动画图像的转换是艺术风格转换中最具挑战性的任务之一。本文采用一种新的生成对抗网络(GANs)体系结构,实现了更快、更准确的风格迁移结果。关于动画风格转换有三个常见问题。首先,在网络生成新图像的过程中,图像的原始内容丢失。其次,生成的图像没有明显的动画样式。最后,网络不够快,而且它们需要大量内存来处理图像。本文提出了一种用于动画风格传递的轻量级快速GAN网络——ARGAN。为了提高输出图像的质量,提出了与灰度样式、内容样式和每个图像的频谱重建相关的三个损失函数。此外,该方法的训练阶段不需要配对数据。该方法将真实世界的图像转换为动画风格的图像的速度明显快于类似的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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