Christos Tzelepis, Georgios Tzimiropoulos, Ioannis Patras
TL;DR尝试通过对预训练 GAN 潜空间上的非线性扭曲性学习来控制底层生成因素,创新性提出了一种非监督发现可解释潜空间路径的新方法,实验结果表明这种方法替代了现有的方法,并在定量和定性上取得了更好的效果。
Abstract
This work addresses the problem of discovering, in an unsupervised manner, interpretable paths in the latent space of pretrained gans, so as to provide an intuitive and easy way of controlling the underlying