Probabilistic and Semantic Descriptions of Image Manifolds and Their Applications
Peter Tu, Zhaoyuan Yang, Richard Hartley, Zhiwei Xu, Jing Zhang, Yiwei, Fu, Dylan Campbell, Jaskirat Singh, Tianyu Wang

TL;DR
This paper explores probabilistic and semantic modeling of image manifolds using generative models like normalizing flows and diffusion models, enabling better understanding, robustness, and interpretability of image data.
Contribution
It introduces a framework combining probabilistic density estimation with semantic representations on image manifolds, enhancing robustness and interpretability.
Findings
Improved semantic robustness against adversarial attacks
Enhanced out-of-distribution detection capabilities
Better semantic interpolation and classification accuracy
Abstract
This paper begins with a description of methods for estimating image probability density functions that reflects the observation that such data is usually constrained to lie in restricted regions of the high-dimensional image space-not every pattern of pixels is an image. It is common to say that images lie on a lower-dimensional manifold in the high-dimensional space. However, it is not the case that all points on the manifold have an equal probability of being images. Images are unevenly distributed on the manifold, and our task is to devise ways to model this distribution as a probability distribution. We therefore consider popular generative models. For our purposes, generative/probabilistic models should have the properties of 1) sample generation: the possibility to sample from this distribution with the modelled density function, and 2) probability computation: given a previously…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis
MethodsDiffusion
