2009
DOI: 10.1117/12.833156
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Research on remote sensing image segmentation based on ant colony algorithm: take the land cover classification of middle Qinling Mountains for example

Abstract: Remote sensing image based on the complexity of the background features, has a wealth of spatial information, how to extract huge amounts of data in the region of interest is a serious problem. Image segmentation refers to certain provisions in accordance with the characteristics of the image into different regions, and it is the key of remote sensing image recognition and information extraction. Reasonably fast image segmentation algorithm is the base of image processing; traditional segmentation methods have… Show more

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Cited by 2 publications
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“…Image segmentation is recently widely used in remote sensing especially since the availability of very high resolution imagery. Numerous approaches of remote sensing image segmentation based on ant colony [17], mean shift clustering [4,23], watershed [10,15], fuzzy C-means clustering [6], memetic [10], Fractal and MRF [13,21,22] algorithms have been developed.…”
Section: Introductionmentioning
confidence: 99%
“…Image segmentation is recently widely used in remote sensing especially since the availability of very high resolution imagery. Numerous approaches of remote sensing image segmentation based on ant colony [17], mean shift clustering [4,23], watershed [10,15], fuzzy C-means clustering [6], memetic [10], Fractal and MRF [13,21,22] algorithms have been developed.…”
Section: Introductionmentioning
confidence: 99%