Different encodings of datapoints in the latent space of latent-vector generative models may result in more or less effective and disentangled characterizations of the different explanatory factors of variation behind the data. Many works have been recently devoted to the explorationof the latent space of specific models, mostly focused on the study of how features are disentangled and of how trajectories producing desired alterations of data in the visible space can be found. In this work we address the more general problem of comparing the latent spaces of different models, looking for transformations between them. We confined the investigation to the familiar and largely investigated case of generative models for the data manifold of human faces. The surprising, preliminary result reported in this article is that (provided models have not been taught or explicitly conceived to act differently) a simple linear mapping is enough to pass from a latent space to another while preserving most of the information.
翻译:潜在矢量变异模型潜在空间中不同数据点的编码可能会导致对数据背后差异的不同解释性因素进行或多或少的效果和分解的定性,最近,许多著作专门探讨特定模型的潜在空间,主要侧重于研究特征如何分解,以及如何在可见空间中找到轨道,从而产生想要的数据变化。在这项工作中,我们处理比较不同模型潜在空间,寻求它们之间的转变这一更为普遍的问题。我们把调查限于熟悉的和大部分调查的人类面部数据组合的基因化模型案例。本篇文章中报告的令人惊讶的初步结果是(未教授或明确设想过各种模型)简单的线性绘图足以在保存大部分信息的同时从潜在空间传到另一个空间。