CycleGANAS: Differentiable Neural Architecture Search for CycleGAN

An, Taegun, Joo, Changhee
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Abstract

We develop a Neural Architecture Search (NAS) framework for CycleGAN that carries out unpaired image-to-image translation task. Extending previous NAS techniques for Generative Adversarial Networks (GANs) to CycleGAN is not straightforward due to the task difference and greater search space. We design architectures that consist of a stack of simple ResNet-based cells and develop a search method that effectively explore the large search space. We show that our framework, called CycleGANAS, not only effectively discovers high-performance architectures that either match or surpass the performance of the original CycleGAN, but also successfully address the data imbalance by individual architecture search for each translation direction. To our best knowledge, it is the first NAS result for CycleGAN and shed light on NAS for more complex structures.
CycleGANAS: CycleGAN的可微神经结构搜索
我们为CycleGAN开发了一个神经结构搜索(NAS)框架,用于执行非配对图像到图像的翻译任务。由于任务差异和更大的搜索空间,将以前用于生成对抗网络(gan)的NAS技术扩展到CycleGAN并不简单。我们设计了由一堆简单的基于resnet的单元组成的架构,并开发了一种有效地探索大搜索空间的搜索方法。我们表明,我们的框架,称为CycleGANAS,不仅有效地发现了匹配或超过原始CycleGAN性能的高性能架构,而且还通过对每个翻译方向的单个架构搜索成功地解决了数据不平衡问题。据我们所知,这是CycleGAN的第一个NAS结果,并为更复杂结构的NAS提供了线索。
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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