Title :
Classification with invariant scattering representations
Author :
Bruna, Joan ; Mallat, Stéphane
Author_Institution :
CMAP, Ecole Polytech., Palaiseau, France
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.
Keywords :
image classification; transforms; Lipschitz continuity; PCA; handwritten digit recognition; image classification; invariant scattering transform representation; modulus operator; nonlinear convolution network; signal representation; Computational modeling; Convolution; Principal component analysis; Scattering; Training; Wavelet transforms; Image classification; Invariant representations; local image descriptors; pattern recognition; texture classification;
Conference_Titel :
IVMSP Workshop, 2011 IEEE 10th
Conference_Location :
Ithaca, NY
Print_ISBN :
978-1-4577-1284-5
DOI :
10.1109/IVMSPW.2011.5970362