Title :
Remote sensing image classification for forestry using MRF models and VQ method
Author :
Yamazaki, Tatsuya ; Gingras, Denis
Author_Institution :
Commun. Res. Lab., Minist. of Posts & Telecommun., Kobe, Japan
Abstract :
Conventional pixelwise classification techniques have two drawbacks. The first is that isolated misclassifications tend to occur because they classify each site independently using spectral information only. The second is that sample data which represents each class are indispensable to estimate model parameters or to train classification neural networks. In this manuscript a new unsupervised contextual method is proposed for multispectral remote sensing image classification. Markov random field (MRF) models are used for modeling the observed and classified images in the proposed method. Both spectral and spatial information can be exploited by the MRF models so as to dissolve contextual inconsistency caused by the first drawback. In addition the vector quantization (VQ) method is introduced to dissolve the second drawback. The VQ method classifies the observed data into several clusters without using any sample data. The image classified by the VQ method is so coarse that it includes misclassification and unknown-class sites, however it can be used as an initial classified image for the following MRF-based classification algorithm. The proposed method was applied to LANDSAT Thematic Mapper data to discriminate deciduous trees from ever-green trees. The accuracy of classification was 64.4% by the VQ method and it was improved up to 88.8% by the MRF-based method
Keywords :
Markov processes; forestry; image classification; remote sensing; vector quantisation; LANDSAT Thematic Mapper data; Markov random field models; deciduous trees; ever-green trees; forestry; misclassification; multispectral remote sensing image classification; observed data classification; remote sensing image classification; spatial information; spectral information; unknown-class sites; unsupervised contextual method; vector quantization method; Classification algorithms; Clustering algorithms; Context modeling; Forestry; Image classification; Markov random fields; Neural networks; Parameter estimation; Remote sensing; Vector quantization;
Conference_Titel :
Industrial Electronics, 1997. ISIE '97., Proceedings of the IEEE International Symposium on
Conference_Location :
Guimaraes
Print_ISBN :
0-7803-3936-3
DOI :
10.1109/ISIE.1997.648624