DocumentCode
1699564
Title
A comparison of neural network and classical texture analysis
Author
Blacknell, D. ; White, R.G.
Author_Institution
DRA, Great Malvern, UK
fYear
1993
fDate
6/15/1905 12:00:00 AM
Firstpage
42491
Lastpage
42497
Abstract
Textures in high resolution radar images may be characterized in terms of their single point statistics and correlation properties. For example, in synthetic aperture radar images, textured regions may be modelled reasonably well by correlated K distributions. For some image analysis techniques, such as image segmentation, it is desirable to be able to classify such textures in a manner which is as close to optimum as possible. The performances of a number of texture classification schemes are compared with the maximum likelihood classification. The schemes which are considered fall into the three categories of autocorrelation function fitting, density estimation and neural network classification. The performances are assessed by classifying simulated textures composed of either Gaussian or K distributed single point statistics
Keywords
correlation methods; image recognition; image segmentation; maximum likelihood estimation; neural nets; statistical analysis; synthetic aperture radar; Gaussian distributed statistics; autocorrelation function fitting; correlated K distributions; correlation properties; density estimation; high resolution radar images; image analysis; image segmentation; maximum likelihood classification; neural network; single point statistics; synthetic aperture radar images; texture classification; textured regions;
fLanguage
English
Publisher
iet
Conference_Titel
Texture analysis in radar and sonar, IEE Seminar on
Conference_Location
London
Type
conf
Filename
280155
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