Natural
Sound Statistics and Divisive Normalization in the Auditory System
Odelia Schwartz and Eero P Simoncelli
Published in:
Advances in Neural Information Processing Systems 13
ed. T.K. Leen, T.G. Dietterich, and V. Tresp,
To appear, May 2001.
© MIT Press, Cambridge, MA.
Presented at:
Neural
Information Processing Systems, Denver CO, Dec 2000.
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We explore the statistical properties of natural sound stimuli pre-processed
with a bank of linear filters. The responses of such filters exhibit
a striking form of statistical dependency, in which the response variance
of each filter grows with the response amplitude of filters tuned for
nearby frequencies. These dependencies may be substantially reduced
using an operation known as divisive normalization, in which the response
of each filter is divided by a weighted sum of the rectified responses
of other filters. The weights may be chosen to maximize the independence
of the normalized responses for an ensemble of natural sounds. We demonstrate
that the resulting model accounts for non-linearities in the response
characteristics of the auditory nerve, by comparing model simulations
to electrophysiological recordings. In previous work (NIPS, 1998) we
demonstrated that an analogous model derived from the statistics of
natural images accounts for non-linear properties of neurons in primary
visual cortex. Thus, divisive normalization appears to be a generic
mechanism for eliminating a type of statistical dependency that is prevalent
in natural signals of different modalities.
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