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Textural and local spatial statistics for the object‐oriented classification of urban areas using high resolution imagery
147
Citations
19
References
2008
Year
EngineeringFeature DetectionLocal Spatial StatisticsObject‐oriented ClassificationImage ClassificationImage AnalysisData SciencePattern RecognitionImage-based ModelingFeature (Computer Vision)Window SizeSpatial ScienceMachine VisionImage Classification (Visual Culture Studies)Spatial Statistical AnalysisGeographyHigh Resolution ImagerySpatial Information SystemComputer VisionUrban GeographyCategorizationRemote SensingTexture AnalysisMedicineSpatial StatisticsImage Classification (Electrical Engineering)
Textural and local spatial statistical information is important in the classification of urban areas using very high resolution imagery. This paper describes the utility of textural and local spatial statistics for the improvement of object‐oriented classification for QuickBird imagery. All textural/spatial bands were used as additional bands in the supervised object‐oriented classification. The texture analysis is based on two levels: segmented image objects and moving windows across the whole image. In the texture analysis over image objects, the angular second moment textural feature at a 45° angle showed an improved classification performance with regard to buildings, depicting the patterns of buildings better than any other directions. The texture analysis based on moving windows across the whole image was conducted with various window sizes (from 3×3 to 13×13), and four grey‐level co‐occurrence matrix (GLCM) textural features (homogeneity, contrast, angular second moment, and entropy) were calculated. The contrast feature with the 7×7 window size improved classification up to 6%. One type of local spatial statistics, Moran's I feature with the vertical neighbourhood rule, improved the classification accuracy even further, up to 7%. Comparison of results between spectral and spectral+textural/spatial information indicated that textural and spatial information can be used to improve the object‐oriented classification of urban areas using very high resolution imagery.
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