Title :
Parameter-Free K-Means Clustering Algorithm for Satellite Imagery Application
Author :
Koonsanit, Kitti ; Jaruskulchai, Chuleerat ; Eiumnoh, Apisit
Author_Institution :
Dept. of Comput. Sci., Kasetsart Univ., Bangkok, Thailand
Abstract :
Unsupervised classification is a popular tool for unlabeled datasets in data mining and exploratory data analysis, such as K-means and Fuzzy C-mean. Although these unsupervised techniques have demonstrated substantial success for satellite imagery, they have some limitations. The initialization number of clusters in K-means clustering application is often needed in advance as an input parameter to the algorithm. Our previous paper regarding the initialization number of clusters in K-means clustering application with a co-occurrence matrix technique has been published. Although our previous approach regarding the number of cluster was discovered, but it was limited to count a number of peaks in occurrence matrix as the number of clusters by manual counting. The best of our previous approach need to automatically find and count a number of peaks in occurrence matrix. In this research, we assume that the satellite imagery is given and we have no knowledge beforehand for segmentation. Hence, this paper presents a simple, parameter-free K-means method for K-means in satellite imagery clustering application to determine the initialization number of clusters with image processing algorithms based on the co-occurrence matrix technique. A maxima technique is proposed for automatic counting a number of peaks in occurrence matrix as the number of clusters. The parameter-free method was tested with hyperspectral imagery and multispectral imagery. The results from the tests confirm the effectiveness of the proposed method in K-means method and compared with isodata algorithm.
Keywords :
artificial satellites; image processing; matrix algebra; pattern clustering; remote sensing; cooccurrence matrix; data mining; exploratory data analysis; hyperspectral imagery; image processing; maxima technique; multispectral imagery; parameter-free k-means clustering algorithm; satellite imagery; unsupervised classification; Algorithm design and analysis; Classification algorithms; Clustering algorithms; Hyperspectral imaging; Satellites;
Conference_Titel :
Information Science and Applications (ICISA), 2012 International Conference on
Conference_Location :
Suwon
Print_ISBN :
978-1-4673-1402-2
DOI :
10.1109/ICISA.2012.6220961