<p><P>One of the most successful frameworks in computational neuroscience is modelling visual processing using the statistical structure of natural images. In this framework, the visual system of the brain constructs a model of the statistical regularities of the incoming visual data. This enables t
Natural Image Statistics: A Probabilistic Approach to Early Computational Vision. (Computational Imaging and Vision)
β Scribed by Aapo Hyvarinen, Jarmo Hurri, Patrick O. Hoyer
- Year
- 2009
- Tongue
- English
- Leaves
- 450
- Edition
- 2nd Printing.
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This book is the first comprehensive introduction to the multidisciplinary field of natural image statistics and its intention is to present a general theory of early vision and image processing in a manner that can be approached by readers from a variety of scientific backgrounds. A wealth of relevant background material is presented in the first section as an introduction to the subject. Following this are five unique sections, carefully selected so as to give a clear overview of all the basic theory, as well as the most recent developments and research. This structure, together with the included exercises and computer assignments, also make it an excellent textbook. Natural Image Statistics is a timely and valuable resource for advanced students and researchers in any discipline related to vision, such as neuroscience, computer science, psychology, electrical engineering, cognitive science or statistics.
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