The study of object transformation based on CycleGAN

Junqing Wang
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Abstract

At present, generative adaptive networks (GAN), has become a popular module in deep learning. GAN is very effective in image generation and image style migration. At present, the research on the migration of image style is focused on images such as oil painting and landscape painting, and lacks the research on the conversion between object images. This paper extends the style transfer technology to object recognition, uses CycleGAN method to learn the mapping relationship between zebra and horse, and realizes the transformation between zebra and horse. Viewing the generation effect of different learning methods by changing the learning times and learning rate policy. This work realizes the conversion between zebra and horse, and shows the generated pictures under different training times and different learning situations. Under the same training times, the conversion effect from horse to zebra will be better. After a certain number of trainings, the training effect will gradually decline. The conversion effect of the same type will be improved with the increase of training times. Different learning rate policies will bring different generation effects.
基于CycleGAN的对象变换研究
目前,生成式自适应网络(GAN)已经成为深度学习中的一个热门模块。GAN在图像生成和图像样式迁移方面非常有效。目前,对图像风格迁移的研究主要集中在油画、山水画等图像上,缺乏对对象图像之间转换的研究。本文将风格迁移技术扩展到物体识别中,利用CycleGAN方法学习斑马与马的映射关系,实现斑马与马之间的转换。通过改变学习时间和学习率策略,查看不同学习方法的生成效果。本工作实现了斑马和马之间的转换,并展示了在不同训练时间和不同学习情况下生成的图片。在相同的训练次数下,从马到斑马的转换效果会更好。经过一定次数的训练后,训练效果会逐渐下降。同类型的转换效果会随着训练次数的增加而提高。不同的学习率策略会带来不同的生成效果。
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