Hyperspectral Image Segmentation Based on Enhanced Estimation of Centroid with Fast K-Means

Hyperspectral Image Segmentation Based on Enhanced Estimation of Centroid with Fast K-Means

Saravana Kumar Veligandan1 and Naganathan Rengasari2

1Department of Information Technology, SreeNidhi Institute of Science and Technology, India

2Symbiosis Institute of Computer Studies and Research, Symbiosis International (Deemed University), India

Abstract: In this paper, the segmentation process is observant on hyperspectral satellite images. A novel approach, hyperspectral image segmentation based on enhanced estimation of centroid with unsupervised clusters such as fast k-means, fast k-means (weight), and fast k-means (careful seeding) has been addressed. Besides, a cohesive image segmentation approach based on inter-band clustering and intra-band clustering is processed. Moreover, the inter band clustering is accomplished by above clustering algorithms, while the intra band clustering is effectuated using Particle Swarm Clustering algorithm (PSC) with Enhanced Estimation of Centroid (EEOC). The hyperspectral bands are clustered and a single band which has a paramount variance from each cluster is opting for. This constructs the diminished set of bands. Finally, PSC EEOC carried out the segmentation process on the diminished bands. In addition, we compare the result produce in these methods by statistical analysis based on number of pixel, fitness value, and elapsed time.

Keywords: Fast k-means, fast k-mean (weight), fast k- means (careful seeding), and particle swarm clustering algorithm.

 

Received March 16, 2015; accepted September 7, 2015
 
Full text  
Read 2157 times
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…