Segmentation-based classification of hyperspectral imagery using projected and correlation clustering techniques |
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Authors: | Anand Mehta Akash Ashapure Onkar Dikshit |
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Affiliation: | Department of Civil Engineering, Indian Institute of Technology Kanpur, Kanpur, India |
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Abstract: | A partitional clustering-based segmentation is used to carry out supervised classification for hyperspectral images. The main contribution of this study lies in the use of projected and correlation partitional clustering techniques to perform image segmentation. These types of clustering techniques have the capability to concurrently perform clustering and feature/band reduction, and are also able to identify different sets of relevant features for different clusters. Using these clustering techniques segmentation map is obtained, which is combined with the pixel-level support vector machines (SVM) classification result, using majority voting. Experiments are conducted over two hyperspectral images. Combination of pixel-level classification result with the segmentation maps leads to significant improvement of accuracies in both the images. Additionally, it is also observed that, classified maps obtained using SVM combined with projected and correlation clustering techniques results in higher accuracies as compared to classified maps obtained from SVM combined with other partitional clustering techniques. |
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Keywords: | Segmentation projected clustering correlation clustering classification feature reduction hyperspectral image |
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