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首页> 外文期刊>Scandinavian Journal of Forest Research >Poisson Voronoi tiling for finding clusters in spatial point patterns.
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Poisson Voronoi tiling for finding clusters in spatial point patterns.

机译:泊松·沃罗诺伊(Poisson Voronoi)拼贴,用于在空间点模式中查找聚类。

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摘要

In forest stand mapping a delineation of spatial compact clusters of trees with similar attributes can improve inventory accuracy and growth and yield predictions. To this end a Poisson Voronoi tiling (PVT) for identifying and delineating clusters (features) in spatial point patterns is proposed. PVT operates on the assumption that the point density in clusters is higher than that outside the clusters. A spatial domain of an observed point pattern is tessellated repeatedly into k (random) Poisson Voronoi cells. An average EM-based likelihood of feature based on observed cell point densities is computed for each point and location of interest. Points and locations of interest are then classified by maximizing a classification likelihood. PVT avoids the need to specify the number of clusters. In a direct comparison with a non-parametric maximum profile likelihood procedure, and a smoothed version of the same, PVT performed well on two artificial point patterns with known feature domain and points, and on two spatial point patterns of first returns from a forest lidar survey on Vancouver Island, British Columbia, Canada..
机译:在林分测绘中,对具有相似属性的树木的空间紧凑丛集进行描述可以提高清单准确性,增长和产量预测。为此,提出了一种用于识别和描绘空间点模式中的聚类(特征)的泊松Voronoi平铺(PVT)。 PVT的假设是,群集中的点密度高于群集外的点密度。将观察到的点模式的空间域重复细分为k个(随机)泊松Voronoi细胞。为每个感兴趣的点和位置计算基于观察到的细胞点密度的平均基于EM的特征似然性。然后,通过最大化分类可能性对感兴趣的点和位置进行分类。 PVT无需指定群集数。与非参数最大轮廓似然程序及其平滑版本进行直接比较后,PVT在具有已知特征域和点的两个人工点模式以及从森林激光雷达首次返回的两个空间点模式上表现良好加拿大不列颠哥伦比亚省温哥华岛的调查。

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