2009 IEEE International Conference on
Systems, Man, and Cybernetics |
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Abstract
A multistage region merging technique, which is an unsupervised technique, has been suggested in this paper for classifying large remotely-sensed imagery. The multistage algorithm consists of two stages. The "local" segmentor of the first stage performs region-growing segmentation by employing a RAG-based merging with the restriction that pixels in a region must be spatially contiguous. The "global" segmentor of the second stage, which has not spatial constraints for merging, merges the segments resulting from the previous stage. The second stage is an agglomerative hierarchical clustering procedure which merges the best MCN defined in spectral space, and then generates a dendrogram which represents a hierarchy of consecutive merging processes. The experimental results show that the new approach proposed in this study is quite efficient to analyze very large images. The technique was then applied to classify the land-cover types using the high-resolution mutispectral satellite data acquired from the Korean peninsula.