Low Entropy Coding with Unsupervised Neural Networks
| Citations: | 17 - 0 self |
BibTeX
@MISC{Harpur_lowentropy,
author = {George Francis Harpur},
title = {Low Entropy Coding with Unsupervised Neural Networks},
year = {}
}
OpenURL
Abstract
ed on visual and speech data. The ability of the network to automatically generate wavelet codes from natural images is demonstrated. These bear a close resemblance to 2-D Gabor functions, which have previously been used to describe physiological receptive fields, and as a means of producing compact image representations. Keywords: neural networks, unsupervised learning, self-organisation, feature extraction, information theory, redundancy reduction, sparse coding, imaging models, occlusion, image coding, speech coding. Declaration This dissertation is the result of my own original work, except where reference is made to the work of others. No part of it has been submitted for any other university degree or diploma. Its length, including captions, footnotes, appendix and bibliography, is approximately 58000 words. Acknowledgements I would like first and foremost to thank Richard Prager, my supervisor, fo







