Significant progress has been made by the advances in Generative Adversarial Networks (GANs) for image generation. However, there lacks enough understanding of how a realistic image is generated by the deep representations of GANs from a random vector. This chapter gives a summary of recent works on interpreting deep generative models. The methods are categorized into the supervised, the unsupervised, and the embedding-guided approaches. We will see how the human-understandable concepts that emerge in the learned representation can be identified and used for interactive image generation and editing.
翻译:生成图像的创能反转网络(GANs)的进展已取得重大进展,但对于从随机矢量中深度展示GANs所产生的现实图像如何产生,缺乏足够的了解,本章概述了最近解释深真化模型的工作,这些方法分为监督、无监督、嵌入指导方法等类别。我们将看到如何确定并用于交互式图像生成和编辑的可理解的、知识化的演示中出现的人类可理解的概念。