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タイトルA review and analysis of neural networks for classification of remotely sensed multispectral imagery
本文(外部サイト)http://hdl.handle.net/2060/19940009130
著者(英)Paola, Justin D.; Schowengerdt, Robert A.
著者所属(英)Research Inst. for Advanced Computer Science
発行日1993-06-01
言語eng
内容記述A literature survey and analysis of the use of neural networks for the classification of remotely sensed multispectral imagery is presented. As part of a brief mathematical review, the backpropagation algorithm, which is the most common method of training multi-layer networks, is discussed with an emphasis on its application to pattern recognition. The analysis is divided into five aspects of neural network classification: (1) input data preprocessing, structure, and encoding; (2) output encoding and extraction of classes; (3) network architecture, (4) training algorithms; and (5) comparisons to conventional classifiers. The advantages of the neural network method over traditional classifiers are its non-parametric nature, arbitrary decision boundary capabilities, easy adaptation to different types of data and input structures, fuzzy output values that can enhance classification, and good generalization for use with multiple images. The disadvantages of the method are slow training time, inconsistent results due to random initial weights, and the requirement of obscure initialization values (e.g., learning rate and hidden layer size). Possible techniques for ameliorating these problems are discussed. It is concluded that, although the neural network method has several unique capabilities, it will become a useful tool in remote sensing only if it is made faster, more predictable, and easier to use.
NASA分類CYBERNETICS
レポートNO94N13603
NASA-CR-194291
NAS 1.26:194291
RIACS-TR-93-05
権利No Copyright


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