Optimal nonlinear cue integration for sound localization

Volume: 42, Issue: 1, Pages: 37 - 52
Published: Oct 6, 2016
Abstract
Integration of multiple sensory cues can improve performance in detection and estimation tasks. There is an open theoretical question of the conditions under which linear or nonlinear cue combination is Bayes-optimal. We demonstrate that a neural population decoded by a population vector requires nonlinear cue combination to approximate Bayesian inference. Specifically, if cues are conditionally independent, multiplicative cue combination is...
Paper Details
Title
Optimal nonlinear cue integration for sound localization
Published Date
Oct 6, 2016
Volume
42
Issue
1
Pages
37 - 52
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