Abstract: A novel approach to the automatic classification of remote sensed images is proposed. This approach is based on a three-phase procedure: first pixels which belong to the areas of interest with large likelihood are selected as seeds; second the seeds are refined into connected shapes using two well known image processing techniques; third the results of the shape refinement algorithms are merged together. The initial seed extraction is performed using a simple thresholding strategy applied to NDVI4-3 index. Subsequently shape refinement through Seeded Region Growing and Watershed Decomposition is applied, finally a merging procedure is applied to build likelihood maps. Experimental results are presented to analyze the correctness and robustness of the method in recognizing vegetation areas around Mount Etna.
Index Terms:
Remote sensing, image processing, classification.
Citation:
G. Gallo, G. Grasso, S. Nicotra, A. Pulvirenti, "Remote Sensed Images Segmentation through Shape Refinement," iciap, pp.0137, 11th International Conference on Image Analysis and Processing (ICIAP'01), 2001