Publication | Closed Access
Performance of k-means based satellite image clustering in RGB and HSV color space
21
Citations
21
References
2016
Year
Unknown Venue
Image AnalysisEngineeringData ScienceData MiningPattern RecognitionRgb Color SpaceColor SpaceHsv Color SpaceFuzzy ClusteringColor CorrectionRemote SensingImage SimilaritySatellite Image ClusteringColorizationSatellite ImagingComputer VisionImage Enhancement
This paper throws a light on the available clustering techniques and algorithms, k-means is used to cluster standard and satellite image in RGB and HSV color space. Normally satellite images comes with data and noises, in order to extract meaningful information efficiently there is a need of image clustering and performance of clustering based on pixel classification is greatly affected by the color space we selected, because image analysis in terms of Red, Green and Blue components is more difficult as compared to in terms of hue, saturation and value in context of differentiation an object. Our analysis of image clustering in two different color spaces using the k-means technique shows that clustering performance decreases with RGB color space when compared to HSV color space. CHI, DBI and SE indexes are calculated and compared.
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