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Visual Population Codes: Toward a Common Multivariate Framework for Cell Recording and Functional Imaging [Kõva köide]

Edited by (Childrens Hospital Boston), Edited by (Medical Research Council)
  • Formaat: Hardback, 656 pages, kõrgus x laius x paksus: 229x178x33 mm, kaal: 1202 g, 151 b&w illus., 5 tables, 15 color plates; 166 Illustrations
  • Sari: Computational Neuroscience Series
  • Ilmumisaeg: 04-Nov-2011
  • Kirjastus: MIT Press
  • ISBN-10: 0262016249
  • ISBN-13: 9780262016247
  • Formaat: Hardback, 656 pages, kõrgus x laius x paksus: 229x178x33 mm, kaal: 1202 g, 151 b&w illus., 5 tables, 15 color plates; 166 Illustrations
  • Sari: Computational Neuroscience Series
  • Ilmumisaeg: 04-Nov-2011
  • Kirjastus: MIT Press
  • ISBN-10: 0262016249
  • ISBN-13: 9780262016247

Vision is a massively parallel computational process, in which the retinal image is transformed over a sequence of stages so as to emphasize behaviorally relevant information (such as object category and identity) and deemphasize other information (such as viewpoint and lighting). The processes behind vision operate by concurrent computation and message passing among neurons within a visual area and between different areas. The theoretical concept of "population code" encapsulates the idea that visual content is represented at each stage by the pattern of activity across the local population of neurons. Understanding visual population codes ultimately requires multichannel measurement and multivariate analysis of activity patterns. Over the past decade, the multivariate approach has gained significant momentum in vision research. Functional imaging and cell recording measure brain activity in fundamentally different ways, but they now use similar theoretical concepts and mathematical tools in their modeling and analyses. With a focus on the ventral processing stream thought to underlie object recognition, this book presents recent advances in our understanding of visual population codes, novel multivariate pattern-information analysis techniques, and the beginnings of a unified perspective for cell recording and functional imaging. It serves as an introduction, overview, and reference for scientists and students across disciplines who are interested in human and primate vision and, more generally, in understanding how the brain represents and processes information.

Series Foreword ix
Preface xi
Introduction: A Guided Tour through the Book 1(20)
I THEORY AND EXPERIMENT
21(454)
1 Grandmother Cells and Distributed Representations
23(30)
Simon J. Thorpe
2 Strategies for Finding Neural Codes
53(18)
Sheila Nirenberg
3 Multineuron Representations of Visual Attention
71(30)
Jasper Poort
Arezoo Pooresmaeili
Pieter R. Roelfsema
4 Decoding Early Visual Representations from fMRI Ensemble Responses
101(32)
Yukiyasu Kamitani
5 Understanding Visual Representation by Developing Receptive-Field Models
133(30)
Kendrick N. Kay
6 System Identification, Encoding Models, and Decoding Models: A Powerful New Approach to fMRI Research
163(26)
Jack L. Gallant
Shinji Nishimoto
Thomas Naselaris
Michael C. K. Wu
7 Population Coding of Object Contour Shape in V4 and Posterior Inferotemporal Cortex
189(24)
Anitha Pasupathy
Scott L. Brincat
8 Measuring Representational Distances: The Spike-Train Metrics Approach
213(32)
Conor Houghton
Jonathan D. Victor
9 The Role of Categories, Features, and Learning for the Representation of Visual Object Similarity in the Human Brain
245(30)
Hans P. Op De Beeck
10 Ultrafast Decoding from Cells in the Macaque Monkey
275(32)
Chou P. Hung
James J. Dicarlo
11 Representational Similarity Analysis of Object Population Codes in Humans, Monkeys, and Models
307(28)
Nikolaus Kriegeskorte
Marieke Mur
12 Three Virtues of Similarity-Based Multivariate Pattern Analysis: An Example from the Human Object Vision Pathway
335(22)
Andrew C. Connolly
M. Ida Gobbini
James V. Haxby
13 Investigating High-Level Visual Representations: Objects, Bodies, and Scenes
357(34)
Dwight J. Kravitz
Annie W.Y. Chan
Chris I. Baker
14 To Err Is Human: Correlating fMRI Decoding and Behavioral Errors to Probe the Neural Representation of Natural Scene Categories
391(26)
Dirk B. Walther
Diane M. Beck
Li Fei-Fei
15 Decoding Visual Consciousness from Human Brain Signals
417(24)
John-Dylan Haynes
16 Probabilistic Codes and Hierarchical Inference in the Brain
441(34)
Karl Friston
II BACKGROUND AND METHODS
475(150)
17 Introduction to the Anatomy and Function of Visual Cortex
477(20)
Kendra S. Burbank
Gabriel Kreiman
18 Introduction to Statistical Learning and Pattern Classification
497(20)
Jed Singer
Gabriel Kreiman
19 Tutorial on Pattern Classification in Cell Recording
517(22)
Ethan Meyers
Gabriel Kreiman
20 Tutorial on Pattern Classification in Functional Imaging
539(26)
Marieke Mur
Nikolaus Kriegeskorte
21 Information-Theoretic Approaches to Pattern Analysis
565(34)
Stefano Panzeri
Robin A. A. Ince
22 Local Field Potentials, BOLD, and Spiking Activity: Relationships and Physiological Mechanisms
599(26)
Philipp Berens
Nikos K. Logothetis
Andreas S. Tolias
Contributors 625(4)
Index 629