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Sensory Cue Integration [Hardback]

Edited by (Assistant Professor, Rehabilitation Institute of Chicago, Northwestern University), Edited by (Professor of Psychology and Neural Science, New York University), Edited by (Assistant Professor, Center for Neural Science, New York University)
  • Formāts: Hardback, 464 pages, height x width x depth: 188x257x28 mm, weight: 1287 g, 178 illustrations
  • Sērija : Computational Neuroscience Series
  • Izdošanas datums: 13-Oct-2011
  • Izdevniecība: Oxford University Press Inc
  • ISBN-10: 0195387244
  • ISBN-13: 9780195387247
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  • Cena: 178,26 €
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  • Formāts: Hardback, 464 pages, height x width x depth: 188x257x28 mm, weight: 1287 g, 178 illustrations
  • Sērija : Computational Neuroscience Series
  • Izdošanas datums: 13-Oct-2011
  • Izdevniecība: Oxford University Press Inc
  • ISBN-10: 0195387244
  • ISBN-13: 9780195387247
Citas grāmatas par šo tēmu:
This book provides an introduction into both computational models and experimental paradigms that are concerned with sensory cue integration both within and between sensory modalities. Importantly, across behavioral, electrophysiological and theoretical approaches, Bayesian statistics is emerging as a common language in which cue-combination problems can be expressed. This book focuses on the emerging probabilistic way of thinking about these problems. These approaches derive from the realization that all our sensors are noisy and moreover are often affected by ambiguity. For example, mechanoreceptor outputs are variable and they cannot distinguish if a perceived force is caused by the weight of an object or by force we are producing ourselves. The computational approaches described in this book aim at formalizing the uncertainty of cues. They describe cue combination as the nervous system's attempt to minimize uncertainty in its estimates and to choose successful actions. Some computational approaches described in the chapters of this book are concerned with the application of such statistical ideas to real-world cue-combination problems, such as shape and depth perception. Other parts of the book ask how uncertainty may be represented in the nervous system and used for cue combination.

The broadening scope of probabilistic approaches to cue combination is highlighted in the breadth of topics covered in this book: the chapters summarize and discuss computational approaches and behavioral evidence aimed at understanding the combination of visual, auditory, proprioceptive, and haptic cues. Some chapters address the combination of cues within a single sensory modality while others address the combination across sensory modalities. Neural implementation, behavior, and theory are considered. The unifying aspect of this book is the focus on the uncertainty intrinsic to sensory cues and the underlying question of how the nervous system deals with this uncertainty.

The book is intended as a reference text for graduate students and professionals in perceptual psychology, computational neuroscience, cognitive neuroscience and sensory neurophysiology.
Contributors ix
Workshop Attendees xiii
Section I Theory and Fundamentals
3(150)
1 Ideal-Observer Models of Cue Integration
5(25)
Michael S. Landy
Martin S. Banks
David C. Knill
2 Causal Inference in Sensorimotor Learning and Control
30(16)
Kunlin Wei
Konrad P. Kording
3 The Role of Generative Knowledge in Object Perception
46(17)
Peter W. Battaglia
Daniel Kersten
Paul Schrater
4 Generative Probabilistic Modeling: Understanding Causal Sensorimotor Integration
63(19)
Sethu Vijayakumar
Timothy Hospedales
Adrian Haith
5 Modeling Cue Integration in Cluttered Environments
82(19)
Maneesh Sahani
Louise Whiteley
6 Recruitment of New Visual Cues for Perceptual Appearance
101(19)
Benjamin T. Backus
7 Combining Image Signals before Three-Dimensional Reconstruction: The Intrinsic Constraint Model of Cue Integration
120(24)
Fulvio Domini
Carrado Caudek
8 Cue Combination: Beyond Optimality
144(9)
Pedro Rosas
Felix A. Wichmann
Section II Behavioral Studies
153(140)
9 Priors and Learning in Cue Integration
155(18)
Anna Seydell
David C. Knill
Julia Trommershauser
10 Multisensory Integration and Calibration in Adults and Children
173(22)
David Burr
Paola Binda
Monica Gori
11 The Statistical Relationship between Depth, Visual Cues, and Human Perception
195(29)
Martin S. Banks
Johannes Burge
Robert T. Held
12 Multisensory Perception: From Integration to Remapping
224(27)
Marc O. Ernst
Massimiliano Di Luca
13 Humans' Multisensory Perception, from Integration to Segregation, Follows Bayesian Inference
251(12)
Ladan Shams
Ulrik Beierholm
14 Cues and Pseudocues in Texture and Shape Perception
263(16)
Michael S. Landy
Yun-Xian Ho
Sascha Serwe
Julia Trommershauser
Laurence T. Moloney
15 Optimality Principles Apply to a Broad Range of Information Integration Problems in Perception and Action
279(14)
Melchi M. Michel
Anne-Marie Brouwer
Robert A. Jacobs
David C. Knill
Section III Neural Implementation
293(129)
16 Self-Motion Perception: Multisensory Integration in Extrastriate Visual Cortex
295(22)
Christopher R. Fetsch
Yong Gu
Gregory C. DeAngelis
Dora E. Angelaki
17 Probing Neural Correlates of Cue Integration
317(16)
Christopher A. Buneo
Gregory Apker
Ying Shi
18 Computational Models of Multisensory Integration in the Cat Superior Colliculus
333(12)
Benjamin A. Rowland
Barry E. Stein
Terrence R. Stanford
19 Decoding the Cortical Representation of Depth
345(23)
Andrew E. Welchman
20 Dynamic Cue Combination in Distributional Population Code Networks
368(25)
Rama Natarajan
Richard S. Zemel
21 A Neural Implementation of Optimal Cue Integration
393(13)
Wei Ji Ma
Jeff Beck
Alexandre Pouget
22 Contextual Modulations of Visual Receptive Fields: A Bayesian Perspective
406(16)
Sophie Deneve
Timm Lochmann
Index 422
Julia Trommershäuser spent three years as a postdoctoral researcher at New York University. From 2004-2009, she was a researcher in the Department of Psychology at Giessen University, Germany, funded by an Emmy-Noether Research Award by the German Science Foundation (DFG). She currently works at the Center for Neural Science at New York University on questions in the field of human decision-making under risk and uncertainty.

Konrad Körding is an Assistant Professor at Northwestern University. His lab focuses on the statistical processing of information in the sensorimotor system.

Michael Landy is a Full Professor of Psychology and Neural Science at New York University. His research concerns visual and visuomotor behavior.