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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Optimization of sampling schemes for vegetation mapping using fuzzy classification
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Optimization of sampling schemes for vegetation mapping using fuzzy classification

机译:基于模糊分类的植被图采样方案优化

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This paper considers the design of an optimal sampling scheme for a multivariate fuzzy-k-means classifier. Fuzzy classification is applied to delineate vegetation patterns from remote sensing data. The confusion index distinguishes subareas with high uncertainty due to class overlapping from those with low uncertainty. These subareas govern allocation of sample points. A simulated annealing approach minimizes the mean of shortest distances between samples. Optimization was done by prioritizing the survey to areas with high uncertainty. The methodology is tested on a site located in the Amazonian region of Peru. It resulted into an almost equilateral triangular scheme at those parts of the area where uncertainty was highest. The study shows that optimal sampling can be successfully combined with fuzzy classification, using an appropriate weight function.
机译:本文考虑了多元模糊k均值分类器的最优采样方案的设计。应用模糊分类从遥感数据中描绘出植被格局。混淆指数区分了由于类别重叠而具有较高不确定性的子区域与具有较低不确定性的子区域。这些子区域控制采样点的分配。模拟退火方法可最大程度地减少样本之间最短距离的平均值。通过将调查的优先级放在不确定性较高的区域来进行优化。该方法已在秘鲁亚马逊地区的一个站点上进行了测试。在不确定性最高的区域,这导致了几乎等边的三角形方案。研究表明,使用适当的权重函数可以将最佳采样与模糊分类成功地结合在一起。

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