Recent work introduced progressive network growing as a promising way to ease the training for large GANs, but the model design and architecture-growing strategy still remain under-explored and needs manual design for different image data. In this paper, we propose a method to dynamically grow a GAN during training, optimizing the network architecture and its parameters together with automation. The method embeds architecture search techniques as an interleaving step with gradient-based training to periodically seek the optimal architecture-growing strategy for the generator and discriminator. It enjoys the benefits of both eased training because of progressive growing and improved performance because of broader architecture design space. Experimental results demonstrate new state-of-the-art of image generation. Observations in the search procedure also provide constructive insights into the GAN model design such as generator-discriminator balance and convolutional layer choices.
翻译:最近的工作引进了渐进式网络,作为便利大型全球大气网络培训的一个有希望的途径,而模型设计和建筑增长战略仍然未得到充分探索,需要为不同的图像数据进行手工设计。在本文件中,我们提出了在培训期间动态地发展全球大气网络的方法,优化网络架构及其参数,同时实现自动化。该方法将建筑搜索技术作为梯度培训的一个相互交织的步骤,以便定期为发电机和歧视者寻求最佳的建筑增长战略。它享受了由于建筑设计空间的扩大和绩效的改善而获得的轻松培训的好处。实验结果展示了新的图像生成最新状态。在搜索过程中的观察也为GAN模型设计提供了建设性的洞察力,例如发电机-差异平衡和进化层选择。