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Combining spatial data with survey data improves predictions of boundaries between settlements

机译:将空间数据与调查数据结合起来可以改善对定居点之间边界的预测

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Studies of land-use change often require the combination of socioeconomic survey data with spatially continuous maps of land-cover change. One approach is to define maps of land ownership, assuming that all land-use change can be attributed to the owners or managers of each parcel of land. Unfortunately, records of administrative boundaries between towns and villages are commonly unavailable in developing countries and prohibitively costly or time consuming to map for individual projects. However, point locations of the settlements themselves can be obtained easily from existing maps or remotely-sensed imagery. In this paper we compare three methods - circular buffers, unweighted Voronoi polygons (sometimes referred to as Thiessen polygons) and multiplicatively weighted Voronoi polygons - for estimating boundaries between villages in an agricultural landscape in West Africa. The benefits and limitations of each approach are discussed, and their accuracy assessed using 98 independently collected GPS coordinates of village boundaries. We present a novel method for generating and optimising weights for multiplicatively weighted Voronoi polygons using survey data of village sizes from a subset of villages. By using both spatial information and survey data from villages, we show that multiplicatively weighted Voronoi polygons outperform other methods of predicting village boundaries, and increase the correlation coefficient between surveyed village area and mapped areas from 0.18 to 0.68 compared with more commonly used unweighted Voronoi polygons. Our method of weighting Voronoi polygons can be implemented with data and software commonly available to researchers and non-governmental organisations. (C) 2016 Elsevier Ltd. All rights reserved.
机译:对土地利用变化的研究通常需要将社会经济调查数据与土地覆盖变化的空间连续图结合起来。一种方法是定义土地所有权图,假设所有土地使用变化都可以归因于每个土地的所有者或管理者。不幸的是,发展中国家通常没有城镇和乡村之间行政区划的记录,并且绘制单个项目的成本过高或费时。但是,可以轻松地从现有地图或遥感图像中获取定居点本身的点位置。在本文中,我们比较了三种方法-估计西非农业景观中村庄之间的边界-圆形缓冲区,未加权的Voronoi多边形(有时称为Thiessen多边形)和乘法加权的Voronoi多边形。讨论了每种方法的优点和局限性,并使用98个独立收集的村庄边界GPS坐标来评估其准确性。我们提出了一种新颖的方法,用于使用来自子集的村庄规模的调查数据来生成和优化加权加权Voronoi多边形的权重。通过使用村庄的空间信息和调查数据,我们发现,加权加权的Voronoi多边形优于其他预测村庄边界的方法,并且与更常用的未加权的Voronoi多边形相比,被调查的村庄面积与地图区域之间的相关系数从0.18增加到0.68 。我们的Voronoi多边形加权方法可以使用研究人员和非政府组织常用的数据和软件来实现。 (C)2016 Elsevier Ltd.保留所有权利。

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