The Sparse Manifold Transform
Abstract
We present a signal representation framework called the sparse manifold transform that combines key ideas from sparse coding, manifold learning, and slow feature analysis. It turns non-linear transformations in the primary sensory signal space into linear interpolations in a representational embedding space while maintaining approximate invertibility. The sparse manifold transform is an unsupervised and generative framework that explicitly and simultaneously models the sparse discreteness and low-dimensional manifold structure found in natural scenes. When stacked, it also models hierarchical composition. We provide a theoretical description of the transform and demonstrate properties of the learned representation on both synthetic data and natural videos.
Cite
@article{arxiv.1806.08887,
title = {The Sparse Manifold Transform},
author = {Yubei Chen and Dylan M. Paiton and Bruno A. Olshausen},
journal= {arXiv preprint arXiv:1806.08887},
year = {2018}
}