Abstract

Abstract. This paper addresses the problem of unsupervised land-cover classification of multi-spectral remotely sensed images in the context of self-learning by exploring different graph based clustering techniques hierarchically. The only assumption used here is that the number of land-cover classes is known a priori. Object based image analysis paradigm which processes a given image at different levels, has emerged as a popular alternative to the pixel based approaches for remote sensing image segmentation considering the high spatial resolution of the images. A graph based fuzzy clustering technique is proposed here to obtain a better merging of an initially oversegmented image in the spectral domain compared to conventional clustering techniques. Instead of using Euclidean distance measure, the cumulative graph edge weight is used to find the distance between a pair of points to better cope with the topology of the feature space. In order to handle uncertainty in assigning class labels to pixels, which is not always a crisp allocation for remote sensing data, fuzzy set theoretic technique is incorporated to the graph based clustering. Minimum Spanning Tree (MST) based clustering technique is used to over-segment the image at the first level. Furthermore, considering that the spectral signature of different land-cover classes may overlap significantly, a self-learning based Maximum Likelihood (ML) classifier coupled with the Expectation Maximization (EM) based iterative unsupervised parameter retraining scheme is used to generate the final land-cover classification map. Results on two medium resolution images establish the superior performance of the proposed technique in comparison to the traditional fuzzy c-means clustering technique.

Highlights

  • Satellite image analysis has attained extensive popularity in the recent past with the advent of several high performance new-age sensors with high spatial and spectral properties

  • The second study area considered in the experiments is acquired by the Thematic Mapper (TM) sensor of the LandSat 5 satellite in September 1995

  • A hierarchical unsupervised land-cover classification technique for multi-spectral remote sensing images is proposed in this correspondence

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Summary

Introduction

Satellite image analysis has attained extensive popularity in the recent past with the advent of several high performance new-age sensors with high spatial and spectral properties. These images are of great importance in diverse application domains including Environmental Monitoring, Urban Planning, Extraction of Regions of Interest (ROI) from the Earth Surface etc. These applications require the proper extraction of the land-cover information from the images for further analysis. Many clustering algorithms require some initial estimations of some of the inherent cluster parameters (mean, variance, etc.) implicitly or explicitly. An improper initialization may lead to a non-reliable clustering outcome

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