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Neural Networks for Perception

Human and Machine Perception

Authors: Harry Wechsler Publisher: Elsevier Science Publication date: 2014 Publication language: Angielski Number of pages: 543 Publication formats: EAN: 9781483260259 ISBN: 9781483260259 Category: Computing & information technology Publisher's index: C2013-0-11675-3 Bibliographic note: -

Description

Neural Networks for Perception, Volume 1: Human and Machine Perception focuses on models for understanding human perception in terms of distributed computation and examples of PDP models for machine perception.

This book addresses both theoretical and practical issues related to the feasibility of both explaining human perception and implementing machine perception in terms of neural network models. The book is organized into two parts. The first part focuses on human perception. Topics on network model of
object recognition in human vision, the self-organization of functional architecture in the cerebral cortex, and the structure and interpretation of neuronal codes in the visual system are detailed under this part. Part two covers the relevance of neural networks for machine perception. Subjects considered under this section include the multi-dimensional linear lattice for Fourier and Gabor transforms, multiple- scale Gaussian filtering, and edge detection; aspects of invariant pattern and object recognition; and neural network for motion processing.

Neuroscientists, computer scientists, engineers, and researchers in artificial intelligence will find the book useful.

TOC

  • Front Cover 2
  • Human and Machine Perception 5
  • Copyright Page 6
  • Table of Contents 9
  • Contents of Volume 2 13
  • Contributors 15
  • Foreword 19
  • PART I: Human Perception 25
    • I. Introduction 27
      • Chapter 1.1. Visual Cortex: Window on the Biological Basis of Learning and Memory 32
        • I. Introduction 32
        • II. Discussion 45
        • References 47
      • Chapter 1.2. A Network Model of Object Recognition in Human Vision 49
        • Abstract 49
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