Noise injection has been proved to be one of the key technique advances in generating high-fidelity images. Despite its successful usage in GANs, the mechanism of its validity is still unclear. In this paper, we propose a geometric framework to theoretically analyze the role of noise injection in GANs. Based on Riemannian geometry, we successfully model the noise injection framework as fuzzy equivalence on the geodesic normal coordinates. Guided by our theories, we find that the existing method is incomplete and a new strategy for noise injection is devised. Experiments on image generation and GAN inversion demonstrate the superiority of our method.
翻译:噪声注射已被证明是制作高不忠图像的关键技术进步之一。 尽管在GANs中成功使用, 但其有效性机制仍不明确。 在本文中, 我们提出一个几何框架, 以便从理论上分析在GANs中注入噪音的作用。 根据Riemannian的几何学, 我们成功地将噪声注射框架建为大地学正常坐标上的模糊等值。 根据我们的理论, 我们发现现有方法不完整, 并制定了新的噪音注射策略。 图像生成实验和GAN反向实验显示了我们方法的优势 。