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The Application of Run-Length Features in Remote Sensing Classification Combined with Neural Network and Rough Set
San Jose, California November 02-November 04
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/GrC.2007.382007 IEEE International Conference on ...
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In this paper, we propose a method of remote sensing classification based on run-length features combined with neural network. According to the criterion of variances between & within classes, we choose efficient features and exclude redundant ones successfully with the method of rough set. In experiment, we use run-length features, co-occurrence features, gray-level gradient co-occurrence features and gray-level smoothed co-occurrence features respectively as inputs of three types of classifiers: BP net, RBF net and a nearest neighbor classifier: K-NN method when applying remote sensing classification for large scale panchromatic SPOT images with high spatial resolution. The result demonstrates the efficiency of the method proposed in this paper.
Citation:
Zhiguo Cao, Yang Xiao, Lamei Zou, "The Application of Run-Length Features in Remote Sensing Classification Combined with Neural Network and Rough Set," grc, pp.552, 2007 IEEE International Conference on Granular Computing (GRC 2007), 2007
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