Parameter selection for region‐growing image segmentation algorithms using spatial autocorrelation 论文

2006International Journal of Remote Sensing引用 318
Remote-Sensing Image ClassificationMedical Image Segmentation TechniquesGrey System Theory Applications

摘要

Region-growing segmentation algorithms are useful for remote sensing image segmentation. These algorithms need the user to supply control parameters, which control the quality of the resulting segmentation. This letter proposes an objective function for selecting suitable parameters for region-growing algorithms to ensure best quality results. It considers that a segmentation has two desirable properties: each of the resulting segments should be internally homogeneous and should be distinguishable from its neighbourhood. The measure combines a spatial autocorrelation indicator that detects separability between regions and a variance indicator that expresses the overall homogeneity of the regions. Keywords: Region-growing segmentation, spatial autocorrelation.