Abstract

A method for urban major road extraction from IKONOS imagery is proposed.The texture features of the imagery were first analyzed in three different levels.The first level calculated the Mahalanobis distance between test pixels and training pixels.The second level calculated the Bhattacharyya distance between the distributions of the pixels in the training area and the pixels within a 3×3 window in the test area.The third level employed cooccurrence matrices over the texture cube built around one pixel,and then calculated Bhattacharyya distance.The processed results were thresholded and thinned,respectively.With the assistance of the geometrical characteristic of roads,the three resultant images corresponding to three levels were merged by fuzzy mathematics.A knowledge-based algorithm was used to link the segmented roads.The result was finally optimized by polynomial fitting.The experiment shows that the proposed method can effectively extract the major urban roads from the high-resolution imagery such as IKONOS.

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