Classification with Invariant Scattering Representations
Computer Vision and Pattern Recognition
2011-12-07 v1 Functional Analysis
Machine Learning
Abstract
A scattering transform defines a signal representation which is invariant to translations and Lipschitz continuous relatively to deformations. It is implemented with a non-linear convolution network that iterates over wavelet and modulus operators. Lipschitz continuity locally linearizes deformations. Complex classes of signals and textures can be modeled with low-dimensional affine spaces, computed with a PCA in the scattering domain. Classification is performed with a penalized model selection. State of the art results are obtained for handwritten digit recognition over small training sets, and for texture classification.
Cite
@article{arxiv.1112.1120,
title = {Classification with Invariant Scattering Representations},
author = {Joan Bruna and Stéphane Mallat},
journal= {arXiv preprint arXiv:1112.1120},
year = {2011}
}
Comments
6 pages, 2 figures; IVMSP Workshop, 2011 IEEE 10th