The Wilson Machine for Image Modeling
Saeed Saremi, Terrence J. Sejnowski

TL;DR
This paper introduces a novel image modeling approach inspired by critical phenomena, using a hierarchical binary representation and probabilistic graphical models to generate natural images without hidden units.
Contribution
It presents a new framework combining criticality theory with stochastic processes for natural image modeling, enabling generation of large, realistic images with simple architectures.
Findings
Successfully generated large, natural-looking images
Introduced a hierarchy of binary images capturing critical fluctuations
Achieved image modeling without hidden units
Abstract
Learning the distribution of natural images is one of the hardest and most important problems in machine learning. The problem remains open, because the enormous complexity of the structures in natural images spans all length scales. We break down the complexity of the problem and show that the hierarchy of structures in natural images fuels a new class of learning algorithms based on the theory of critical phenomena and stochastic processes. We approach this problem from the perspective of the theory of critical phenomena, which was developed in condensed matter physics to address problems with infinite length-scale fluctuations, and build a framework to integrate the criticality of natural images into a learning algorithm. The problem is broken down by mapping images into a hierarchy of binary images, called bitplanes. In this representation, the top bitplane is critical, having…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Advanced Vision and Imaging · Image and Object Detection Techniques
MethodsLogistic Regression
