Jump to ContentJump to Main Navigation
Bayesian BrainProbabilistic Approaches to Neural Coding$
Users without a subscription are not able to see the full content.

Kenji Doya, Shin Ishii, Alexandre Pouget, and Rajesh P.N. Rao

Print publication date: 2006

Print ISBN-13: 9780262042383

Published to MIT Press Scholarship Online: August 2013

DOI: 10.7551/mitpress/9780262042383.001.0001

Show Summary Details
Page of

PRINTED FROM MIT PRESS SCHOLARSHIP ONLINE (www.mitpress.universitypressscholarship.com). (c) Copyright The MIT Press, 2021. All Rights Reserved. An individual user may print out a PDF of a single chapter of a monograph in MITSO for personal use.date: 12 April 2021

Bayesian Models of Sensory Cue Integration

Bayesian Models of Sensory Cue Integration

(p.189) 9 Bayesian Models of Sensory Cue Integration
Bayesian Brain

David C. Knill

The MIT Press

This chapter discusses how the Bayesian probability theory can be used as a framework in integrating multiple sensory cues, introduces elements of Bayesian theories of perception, and describes some psychophysical tests of Bayesian cue integration.

Keywords:   Bayesian probability theory, probability, sensory cues, perception, psychophysical tests, Bayesian cue integration

MIT Press Scholarship Online requires a subscription or purchase to access the full text of books within the service. Public users can however freely search the site and view the abstracts and keywords for each book and chapter.

Please, subscribe or login to access full text content.

If you think you should have access to this title, please contact your librarian.

To troubleshoot, please check our FAQs, and if you can't find the answer there, please contact us.