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Quantification of Extensional Uncertainty of Segmented Image Objects by Random Sets

机译:随机集量化分割图像对象的扩展不确定度

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摘要

Investigations in data quality and uncertainty modeling are becoming key topics in geoinformation science. This paper models a collection of outcomes from a standard segmentation algorithm as a random set. It quantifies extensional uncertainties of extracted objects using statistical characteristics of random sets. The approach is applied to a synthetic data set and vegetation patches in the Poyang Lake area in China. These patches are of interest as they have both sharp and vague boundaries. Results show that random sets provide useful spatial information on uncertainties using their basic parameters like the mean, level sets, and variance. The number of iterations to achieve a stable covering function and the sum of the variances are good indicators of boundary sharpness. The coefficient of variation has a positive relation with the degree of uncertainty. An asymmetry ratio reflects the uneven gradual changes along different directions where broad boundaries exist. This paper shows that several characteristics of extensional uncertainty of segmented objects can be quantified numerically and spatially by random sets.
机译:数据质量和不确定性建模的研究已成为地理信息科学的关键主题。本文将标准分割算法的结果集合建模为随机集。它使用随机集的统计特征量化提取对象的扩展不确定性。该方法应用于中国the阳湖地区的综合数据集和植被斑块。这些补丁具有清晰而模糊的边界,因此很受关注。结果表明,随机集使用其基本参数(例如均值,水平集和方差)提供了有关不确定性的有用空间信息。实现稳定覆盖功能的迭代次数和方差之和是边界清晰度的良好指标。变异系数与不确定度呈正相关。不对称比率反映了存在宽边界的不同方向上的不均匀渐变。本文表明,可以通过随机集在数值和空间上量化分割对象的扩展不确定性的几个特征。

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