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288 pp. per issue, 6 x 9,
illustrated
Founded: 1989
ISSN 0899-7667
E-ISSN 1530-888X
2008 ISI Impact Factor: 2.378

Neural Computation

November 2006, Vol. 18, No. 11, Pages 2680-2718
Posted Online September 25, 2006.
(doi:10.1162/neco.2006.18.11.2680)
© 2006 Massachusetts Institute of Technology
Soft Mixer Assignment in a Hierarchical Generative Model of Natural Scene Statistics

Odelia Schwartz

Howard Hughes Medical Institute, Computational Neurobiology Lab, Salk Institute for Biological Studies, La Jolla, CA 92037, U.S.A.

Terrence J. Sejnowski

Howard Hughes Medical Institute, Computational Neurobiology Lab, Salk Institute for Biological Studies, La Jolla, CA 92037, and Department of Biology, University of California at San Diego, La Jolla, CA 92093, U.S.A.

Peter Dayan

Gatsby Computational Neuroscience Unit, University College, London WC1N 3AR, U.K.

PDF (1,984.545 KB) PDF Plus (960.929 KB)

Gaussian scale mixture models offer a top-down description of signal generation that captures key bottom-up statistical characteristics of filter responses to images. However, the pattern of dependence among the filters for this class of models is prespecified. We propose a novel extension to the gaussian scale mixturemodel that learns the pattern of dependence from observed inputs and thereby induces a hierarchical representation of these inputs. Specifically, we propose that inputs are generated by gaussian variables (modeling local filter structure), multiplied by a mixer variable that is assigned probabilistically to each input from a set of possible mixers. We demonstrate inference of both components of the generative model, for synthesized data and for different classes of natural images, such as a generic ensemble and faces. For natural images, the mixer variable assignments show invariances resembling those of complex cells in visual cortex; the statistics of the gaussian components of the model are in accord with the outputs of divisive normalization models. We also show how our model helps interrelate a wide range of models of image statistics and cortical processing.

Cited by

Felix Creutzig, Henning Sprekeler. (2008) Predictive Coding and the Slowness Principle: An Information-Theoretic Approach. Neural Computation 20:4, 1026-1041
Online publication date: 1-Apr-2008.
Abstract | PDF (152 KB) | PDF Plus (167 KB) 

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