Recent methods for conditional image generation benefit from dense supervision such as segmentation label maps to achieve high-fidelity. However, it is rarely explored to employ dense supervision for unconditional image generation. Here we explore the efficacy of dense supervision in unconditional generation and find generator feature maps can be an alternative of cost-expensive semantic label maps. From our empirical evidences, we propose a new generator-guided discriminator regularization(GGDR) in which the generator feature maps supervise the discriminator to have rich semantic representations in unconditional generation. In specific, we employ an U-Net architecture for discriminator, which is trained to predict the generator feature maps given fake images as inputs. Extensive experiments on mulitple datasets show that our GGDR consistently improves the performance of baseline methods in terms of quantitative and qualitative aspects. Code is available at https://github.com/naver-ai/GGDR
翻译:有条件图像生成的近期方法得益于密集监督,如分块标签图,以达到高不贞度。然而,很少探索对无条件图像生成采用密集监督。在这里,我们探索了无条件生成的密集监督的功效,发现发电机地貌图可以替代成本昂贵的语义标签图。从我们的经验证据中,我们建议一个新的发电机制导歧视者规范化(GGDR),其中发电机地貌图监督歧视者在无条件生成的过程中拥有丰富的语义表征。具体地说,我们使用U-Net制导师结构,该结构经过培训,可以预测以假图像作为投入的生成地貌图。关于模擬数据集的广泛实验表明,我们的GDR在数量和质量方面不断改进基线方法的性能。代码可在https://github.com/naver-ai/GDR查阅 https://github. com/naver-ai/GDR查阅。