Back to Search Start Over

Greedy Structure Learning of Hierarchical Compositional Models

Authors :
Kortylewski, Adam
Wieczorek, Aleksander
Wieser, Mario
Blumer, Clemens
Parbhoo, Sonali
Morel-Forster, Andreas
Roth, Volker
Vetter, Thomas
Publication Year :
2017

Abstract

In this work, we consider the problem of learning a hierarchical generative model of an object from a set of images which show examples of the object in the presence of variable background clutter. Existing approaches to this problem are limited by making strong a-priori assumptions about the object's geometric structure and require segmented training data for learning. In this paper, we propose a novel framework for learning hierarchical compositional models (HCMs) which do not suffer from the mentioned limitations. We present a generalized formulation of HCMs and describe a greedy structure learning framework that consists of two phases: Bottom-up part learning and top-down model composition. Our framework integrates the foreground-background segmentation problem into the structure learning task via a background model. As a result, we can jointly optimize for the number of layers in the hierarchy, the number of parts per layer and a foreground-background segmentation based on class labels only. We show that the learned HCMs are semantically meaningful and achieve competitive results when compared to other generative object models at object classification on a standard transfer learning dataset.<br />Comment: CVPR 2019

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1701.06171
Document Type :
Working Paper