Probabilistic Models of the Brain: Perception and Neural Function (Neural Information Processing) 🔍
Rajesh P. N. Rao, Bruno A. Olshausen, Michael S. Lewicki (eds.)
A Bradford Book, The MIT Press, Neural information processing series, Cambridge, Mass, ©2002
英语 [en] · PDF · 3.5MB · 2002 · 📘 非小说类图书 · 🚀/lgli/lgrs/nexusstc/upload/zlib · Save
描述
Neurophysiological, neuroanatomical, and brain imaging studies have helped to shed light on how the brain transforms raw sensory information into a form that is useful for goal-directed behavior. A fundamental question that is seldom addressed by these studies, however, is why the brain uses the types of representations it does and what evolutionary advantage, if any, these representations confer. It is difficult to address such questions directly via animal experiments. A promising alternative is to use probabilistic principles such as maximum likelihood and Bayesian inference to derive models of brain function.This book surveys some of the current probabilistic approaches to modeling and understanding brain function. Although most of the examples focus on vision, many of the models and techniques are applicable to other modalities as well. The book presents top-down computational models as well as bottom-up neurally motivated models of brain function. The topics covered include Bayesian and information-theoretic models of perception, probabilistic theories of neural coding and spike timing, computational models of lateral and cortico-cortical feedback connections, and the development of receptive field properties from natural signals.
备用文件名
upload/newsarch_ebooks/2019/05/09/0262182246_Probabilistic.pdf
备用文件名
nexusstc/Probabilistic Models of the Brain: Perception and Neural Function (Neural Information Processing)/7ed75b60cb882781030241a59a69ece2.pdf
备用文件名
lgli/_441346.7ed75b60cb882781030241a59a69ece2.pdf
备用文件名
lgrsnf/_441346.7ed75b60cb882781030241a59a69ece2.pdf
备用文件名
zlib/Medicine/Rajesh P. N. Rao, Bruno A. Olshausen, Michael S. Lewicki (eds.)/Probabilistic Models of the Brain: Perception and Neural Function (Neural Information Processing)_1234698.pdf
备选作者
Rajesh P.N. Rao; Bruno A. Olshausen; Michael S. Lewicki; Paul Schrater
备用出版商
AAAI Press
备用版本
United States, United States of America
备用版本
MIT Press, Cambridge, Mass, 2002
备用版本
New Edition, 2002
备用版本
February 15, 2002
元数据中的注释
lg796850
元数据中的注释
producers:
Acrobat Distiller 7.0 (Windows)
Acrobat Distiller 7.0 (Windows)
元数据中的注释
{"isbns":["0262182246","9780262182249"],"last_page":335,"publisher":"A Bradford Book, The MIT Press","series":"Neural Information Processing"}
备用描述
A survey of probabilistic approaches to modeling and understanding brain function.Neurophysiological, neuroanatomical, and brain imaging studies have helped to shed light on how the brain transforms raw sensory information into a form that is useful for goal-directed behavior. A fundamental question that is seldom addressed by these studies, however, is why the brain uses the types of representations it does and what evolutionary advantage, if any, these representations confer. It is difficult to address such questions directly via animal experiments. A promising alternative is to use probabilistic principles such as maximum likelihood and Bayesian inference to derive models of brain function.This book surveys some of the current probabilistic approaches to modeling and understanding brain function. Although most of the examples focus on vision, many of the models and techniques are applicable to other modalities as well. The book presents top-down computational models as well as bottom-up neurally motivated models of brain function. The topics covered include Bayesian and information-theoretic models of perception, probabilistic theories of neural coding and spike timing, computational models of lateral and cortico-cortical feedback connections, and the development of receptive field properties from natural signals.
备用描述
Cover 1
Neural Information Processing Series 3
Probabilistic Models of the Brain: Perception and Neural Function 4
Copyright 5
Contents 6
Series Foreword 8
Preface 10
Introduction 12
Part I: Perception 22
1 Bayesian Modelling of Visual Perception 24
2 Vision, Psychophysics and Bayes 48
3 Visual Cue Integration for Depth Perception 72
4 Velocity Likelihoods in Biological and Machine Vision 88
5 Learning Motion Analysis 108
6 Information Theoretic Approach to Neural Coding and Parameter Estimation: A Perspective 128
7 From Generic to Specific: An Information Theoretic Perspective on the Value o fHigh-Level Information 146
8 Sparse Correlation Kernel Reconstruction and Superresolution 166
Part II: Neural Function 190
9 Natural Image Statistics for CorticalOrientati on Map Development 192
10 Natural Image Statistics and Divisive Normalization 214
11 A Probabilistic Network Model of Population Responses 234
12 Efficient Coding of Time-Varying Signals Using a Spiking Population Code 254
13 Sparse Codes and Spikes 268
14 Distributed Synchrony: A Probabilistic Model of Neural Signaling 284
15 Learning to Use Spike Timing in a Restricted Boltzmann Machine 296
16 Predictive Coding, Cortical Feedback, and Spike-Timing Dependent Plasticity 308
Contributors 328
Index 332
Neural Information Processing Series 3
Probabilistic Models of the Brain: Perception and Neural Function 4
Copyright 5
Contents 6
Series Foreword 8
Preface 10
Introduction 12
Part I: Perception 22
1 Bayesian Modelling of Visual Perception 24
2 Vision, Psychophysics and Bayes 48
3 Visual Cue Integration for Depth Perception 72
4 Velocity Likelihoods in Biological and Machine Vision 88
5 Learning Motion Analysis 108
6 Information Theoretic Approach to Neural Coding and Parameter Estimation: A Perspective 128
7 From Generic to Specific: An Information Theoretic Perspective on the Value o fHigh-Level Information 146
8 Sparse Correlation Kernel Reconstruction and Superresolution 166
Part II: Neural Function 190
9 Natural Image Statistics for CorticalOrientati on Map Development 192
10 Natural Image Statistics and Divisive Normalization 214
11 A Probabilistic Network Model of Population Responses 234
12 Efficient Coding of Time-Varying Signals Using a Spiking Population Code 254
13 Sparse Codes and Spikes 268
14 Distributed Synchrony: A Probabilistic Model of Neural Signaling 284
15 Learning to Use Spike Timing in a Restricted Boltzmann Machine 296
16 Predictive Coding, Cortical Feedback, and Spike-Timing Dependent Plasticity 308
Contributors 328
Index 332
备用描述
<p>Neurophysiological, neuroanatomical, and brain imaging studies have helped to shed light on how the brain transforms raw sensory information into a form that is useful for goal-directed behavior. A fundamental question that is seldom addressed by these studies, however,is why the brain uses the types of representations it does and what evolutionary advantage, if any,these representations confer. It is difficult to address such questions directly via animal experiments. A promising alternative is to use probabilistic principles such as maximum likelihood and Bayesian inference to derive models of brain function.This book surveys some of the current probabilistic approaches to modeling and understanding brain function. Although most of the examples focus on vision, many of the models and techniques are applicable to other modalities as well. The book presents top-down computational models as well as bottom-up neurally motivated models of brain function. The topics covered include Bayesian and information-theoretic models of perception,probabilistic theories of neural coding and spike timing, computational models of lateral and cortico-cortical feedback connections, and the development of receptive field properties from natural signals.</p>
备用描述
Neurophysiological, neuroanatomical, and brain imaging studies have helped to shed light on how the brain transforms raw sensory information into a form that is useful for goal-directed behavior. A fundamental question that is seldom addressed by these studies, however, is why the brain uses the types of representations it does and what evolutionary advantage, if any, these representations confer. It is difficult to address such questions directly via animal experiments. A promising alternative is to use probabilistic principles such as maximum likelihood and Bayesian inference to derive models of brain function.
This book surveys some of the current probabilistic approaches to modeling and understanding brain function. Although most of the examples focus on vision, many of the models and techniques are applicable to other modalities as well. The book presents top-down computational models as well as bottom-up neurally motivated models of brain function. The topics covered include Bayesian and information-theoretic models of perception, probabilistic theories of neural coding and spike timing, computational models of lateral and cortico-cortical feedback connections, and the development of receptive field properties from natural signals.
This book surveys some of the current probabilistic approaches to modeling and understanding brain function. Although most of the examples focus on vision, many of the models and techniques are applicable to other modalities as well. The book presents top-down computational models as well as bottom-up neurally motivated models of brain function. The topics covered include Bayesian and information-theoretic models of perception, probabilistic theories of neural coding and spike timing, computational models of lateral and cortico-cortical feedback connections, and the development of receptive field properties from natural signals.
备用描述
Each waking moment, our body's sensory receptors convey a vast amount of information about the surrounding environment to the brain.
开源日期
2012-03-09
🚀 快速下载
成为会员以支持书籍、论文等的长期保存。为了感谢您对我们的支持,您将获得高速下载权益。❤️
如果您在本月捐款,您将获得双倍的快速下载次数。
🐢 低速下载
由可信的合作方提供。 更多信息请参见常见问题解答。 (可能需要验证浏览器——无限次下载!)
- 低速服务器(合作方提供) #1 (稍快但需要排队)
- 低速服务器(合作方提供) #2 (稍快但需要排队)
- 低速服务器(合作方提供) #3 (稍快但需要排队)
- 低速服务器(合作方提供) #4 (稍快但需要排队)
- 低速服务器(合作方提供) #5 (无需排队,但可能非常慢)
- 低速服务器(合作方提供) #6 (无需排队,但可能非常慢)
- 低速服务器(合作方提供) #7 (无需排队,但可能非常慢)
- 低速服务器(合作方提供) #8 (无需排队,但可能非常慢)
- 低速服务器(合作方提供) #9 (无需排队,但可能非常慢)
- 下载后: 在我们的查看器中打开
所有选项下载的文件都相同,应该可以安全使用。即使这样,从互联网下载文件时始终要小心。例如,确保您的设备更新及时。
外部下载
-
对于大文件,我们建议使用下载管理器以防止中断。
推荐的下载管理器:JDownloader -
您将需要一个电子书或 PDF 阅读器来打开文件,具体取决于文件格式。
推荐的电子书阅读器:Anna的档案在线查看器、ReadEra和Calibre -
使用在线工具进行格式转换。
推荐的转换工具:CloudConvert和PrintFriendly -
您可以将 PDF 和 EPUB 文件发送到您的 Kindle 或 Kobo 电子阅读器。
推荐的工具:亚马逊的“发送到 Kindle”和djazz 的“发送到 Kobo/Kindle” -
支持作者和图书馆
✍️ 如果您喜欢这个并且能够负担得起,请考虑购买原版,或直接支持作者。
📚 如果您当地的图书馆有这本书,请考虑在那里免费借阅。
下面的文字仅以英文继续。
总下载量:
“文件的MD5”是根据文件内容计算出的哈希值,并且基于该内容具有相当的唯一性。我们这里索引的所有影子图书馆都主要使用MD5来标识文件。
一个文件可能会出现在多个影子图书馆中。有关我们编译的各种数据集的信息,请参见数据集页面。
有关此文件的详细信息,请查看其JSON 文件。 Live/debug JSON version. Live/debug page.