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An Application of Artificial Intelligence System for Accuracy Improvement in Classification of Remotely Sensed Images  

양인태 (강원대학교 토목공학과)
한성만 (강원대학교 토목공학과)
박재국 (강원대학교 토목공학과)
Publication Information
Journal of the Korean Society of Surveying, Geodesy, Photogrammetry and Cartography / v.20, no.1, 2002 , pp. 21-31 More about this Journal
Abstract
This study applied each Neural Networks theory and Fuzzy Set theory to improve accuracy in remotely sensed images. Remotely sensed data have been used to map land cover. The accuracy is dependent on a range of factors related to the data set and methods used. Thus, the accuracy of maps derived from conventional supervised image classification techniques is a function of factors related to the training, allocation, and testing stages of the classification. Conventional image classification techniques assume that all the pixels within the image are pure. That is, that they represent an area of homogeneous cover of a single land-cover class. But, this assumption is often untenable with pixels of mixed land-cover composition abundant in an image. Mixed pixels are a major problem in land-cover mapping applications. For each pixel, the strengths of class membership derived in the classification may be related to its land-cover composition. Fuzzy classification techniques are the concept of a pixel having a degree of membership to all classes is fundamental to fuzzy-sets-based techniques. A major problem with the fuzzy-sets and probabilistic methods is that they are slow and computational demanding. For analyzing large data sets and rapid processing, alterative techniques are required. One particularly attractive approach is the use of artificial neural networks. These are non-parametric techniques which have been shown to generally be capable of classifying data as or more accurately than conventional classifiers. An artificial neural networks, once trained, may classify data extremely rapidly as the classification process may be reduced to the solution of a large number of extremely simple calculations which may be performed in parallel.
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  • Reference
1 /
[ John R. Jensen ] / Introductory Digital Image Processing(2 Edition)
2 /
[ 오창석 ] / 뉴로컴퓨터
3 퍼지집합 이론을 이용한 원겹탐사 영상의 최대 우도 토지피복 분류 및 변화탐지 기법의 개발 /
[ 김홍규 ] / 박사학위논문
4 /
[ 김대수 ] / 신경망의 이론과 응용 Ⅰ
5 /
[ 김대수 ] / 신경망의 이론과 응용 Ⅱ
6 다시기 원격탐사 영상의 퍼지 감독분류 결과를 이용한 변화탐지기법의 개발 /
[ 양인태;김홍규;신계종 ] / 대한토목학회논문집   과학기술학회마을
7 /
[ Cihan H. Dagli ] / Artificial Neural Networks for Intelligent Manufacturing