Multi-spectral Texture Segmentation Based on the Spectral Cooccurrence Matrix

被引:0
|
作者
M. Hauta-Kasari
J. Parkkinen
T. Jaaskelainen
R. Lenz
机构
[1] Department of Information Technology,
[2] Lappeenranta University of Technology,undefined
[3] Lappeenranta,undefined
[4] Finland,undefined
[5] Department of Computer Science,undefined
[6] University of Joensuu,undefined
[7] Joensuu,undefined
[8] Finland,undefined
[9] Väisälä Laboratory,undefined
[10] University of Joensuu,undefined
[11] Finland,undefined
[12] Department of Science and Engineering,undefined
[13] Campus Norrköping,undefined
[14] Linköping University,undefined
[15] Norrköping,undefined
[16] Sweden,undefined
来源
关键词
Key words: Colour; Cooccurrence matrix; Multi-spectral imaging; Multi-spectral texture; Segmentation; Texture;
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摘要
Multi-spectral images are becoming more common in industrial inspection tasks where the colour is used as a quality measure. In this paper we propose a spectral cooccurrence matrix-based method to analyse multi-spectral texture images, in which every pixel contains a measured colour spectrum. We first quantise the spectral domain of the multi-spectral images using the Self-Organising Map (SOM). Next we label the spectral domain according to the quantised spectra. In the spatial domain, we represent a multi-spectral texture using the spectral cooccurrence matrix, which we calculate from the labelled image. In the experimental part of this paper, we present the results of segmenting natural multi-spectral textures. We compared the k-nearest neighbour (k-NN) classifier and the multilayer perceptron (MLP) neural network-based segmentation results of the multi-spectral and RGB colour textures.
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页码:275 / 284
页数:9
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