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Perception as Bayesian Inference [Kietas viršelis]

Edited by (University of Pennsylvania), Edited by (Massachusetts Institute of Technology)
  • Formatas: Hardback, 530 pages, aukštis x plotis x storis: 254x178x29 mm, weight: 1130 g, 8 Halftones, unspecified; 132 Line drawings, unspecified
  • Išleidimo metai: 13-Sep-1996
  • Leidėjas: Cambridge University Press
  • ISBN-10: 052146109X
  • ISBN-13: 9780521461092
Kitos knygos pagal šią temą:
  • Formatas: Hardback, 530 pages, aukštis x plotis x storis: 254x178x29 mm, weight: 1130 g, 8 Halftones, unspecified; 132 Line drawings, unspecified
  • Išleidimo metai: 13-Sep-1996
  • Leidėjas: Cambridge University Press
  • ISBN-10: 052146109X
  • ISBN-13: 9780521461092
Kitos knygos pagal šią temą:
Describes an exciting new theoretical paradigm for visual perception based on experimental and computational insights.

In recent years, Bayesian probability theory has emerged not only as a powerful tool for building computational theories of vision, but also as a general paradigm for studying human visual perception. This book provides an introduction to and critical analysis of the Bayesian paradigm. Leading researchers in computer vision and experimental vision science describe general theoretical frameworks for modeling vision, detailed applications to specific problems and implications for experimental studies of human perception. The book provides a dialogue between different perspectives both within chapters, which draw on insights from experimental and computational work, and between chapters, through commentaries written by the contributors on each other's work. Students and researchers in cognitive and visual science will find much to interest them in this thought-provoking collection.

Daugiau informacijos

This 1996 book describes an exciting theoretical paradigm for visual perception based on experimental and computational insights.
1. Introduction D. C. Knill, D. Kersten and A. Yuille
2. Pattern theory: a unifying perspective D. Mumford
3. Modal structure and reliable inference A. Jepson, W. Richards and D. C. Knill
4. Priors, preferences and categorical percepts W. Richards, A. Jepson and J. Feldman
5. Bayesian decision theory and psychophysics A. L. Yuille and H. H. Bulthoff
6. Observer theory, Bayes theory, and psychophysics B. M. Bennett, D. D. Hoffman, C. Prakash and S. N. Richman
7. Implications of a Bayesian formulation D. C. Knill, D. Kersten and P. Mamassian
8. Shape from texture: ideal observers and human psychophysics A. Blake, H. H. Bulthoff and D. Sheinberg
9. A computational theory for binocular stereopsis P. N. Belhumeur
10. The generic viewpoint assumption in a Bayesian framework W. T. Freeman
11. Experiencing and perceiving visual surfaces K. Nakayama and S. Shimojo
12. The perception of shading and reflectance E. H. Adelson and A. P. Pentland
13. Banishing the Homunculus H. Barlow.