RECOGNIZING CORRELATED PATTERNS FROM REMOTELY SENSED IMAGES: A NEW LEARNING RULE BASED ON SPIN GLASS THEORY

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dc.contributor.author Krishnan R.
dc.contributor.author Vijendran V.G.
dc.date.accessioned 2021-02-12T02:17:48Z
dc.date.available 2021-02-12T02:17:48Z
dc.date.issued 2001
dc.identifier https://www.elibrary.ru/item.asp?id=569756
dc.identifier.citation Mathematical Geology, 2001, 33, 3, 377-392
dc.identifier.issn 0882-8121
dc.identifier.uri https://repository.geologyscience.ru/handle/123456789/24680
dc.description.abstract Classification of remotely sensed images is a rich research field wherein techniques from conventional statistics to recent developments such as Artificial Neural Network, Fuzzy logic etc. has wide applications. Conventionally remotely sensed image classification referred to pixel classification based on broad categories such as vegetation and water bodies. With the availability of high-resolution imageries, shape analysis of macro structures contained in images becomes an important and difficult task. Although conventional statistical pattern recognition techniques give a reasonable result, Artificial neural network methods seem to be giving better results. In this paper, we give a survey of feed-forward neural network used for shape classification and a Hopfield model with an improved learning rule, for a typical shape analysis problem.
dc.subject BACK PROPAGATION MODEL
dc.subject HOPFIELD MODEL
dc.subject SPIN GLASS MODEL
dc.title RECOGNIZING CORRELATED PATTERNS FROM REMOTELY SENSED IMAGES: A NEW LEARNING RULE BASED ON SPIN GLASS THEORY
dc.type Статья


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