From gestalt theory to image analysis: A probabilistic approach

Agnès DESOLNEUX, Lionel MOISAN, Jean-Michel MOREL

Research output: Scholarly Books | Reports | Literary WorksBook (Author)peer-review

310 Citations (Scopus)

Abstract

This book introduces the reader to a recent theory in Computer Vision yielding elementary techniques to analyse digital images. These techniques are inspired from and are a mathematical formalization of the Gestalt theory. Gestalt theory, which had never been formalized is a rigorous realm of vision psychology developped between 1923 and 1975.

From the mathematical viewpoint the closest field to it is stochastic geometry, involving basic probability and statistics, in the context of image analysis.

The book is intended for a multidisciplinary audience of researchers and engineers. It is self contained in three aspects: mathematics, vision and algorithms, and requires only a background of elementary calculus and probability. A large number of illustrations, exercises and examples are included. The authors maintain a public software, MegaWave, containing implementations of most of the image analysis techniques developed in the book.
Original languageEnglish
PublisherSpringer New York
Number of pages274
ISBN (Electronic)9780387743783
ISBN (Print)9780387726359, 9781441924810
DOIs
Publication statusPublished - 2008
Externally publishedYes

Keywords

  • Alignment
  • Analysis
  • Computer Vision
  • Maxima
  • computer

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