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A general framework for error analysis in measurement-based GIS Part 2: The algebra-based probability model for point-in-polygon analysis

机译:基于度量的GIS中误差分析的通用框架,第2部分:多边形点分析的基于代数的概率模型

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This is the second paper of a four-part series of papers on the development of a general framework for error analysis in measurement-based geographic information systems (MBGIS). In this paper, we discuss the problem of point-in-polygon analysis under randomness, i.e., with random measurement error (ME). It is well known that overlay is one of the most important operations in GIS, and point-in-polygon analysis is a basic class of overlay and query problems. Though it is a classic problem, it has, however, not been addressed appropriately. With ME in the location of the vertices of a polygon, the resulting random polygons may undergo complex changes, so that the point-in-polygon problem may become theoretically and practically ill-defined. That is, there is a possibility that we cannot answer whether a random point is inside a random polygon if the polygon is not simple and cannot form a region. For the point-in-triangle problem, however, such a case need not be considered since any triangle always forms an interior or region. To formulate the general point-in-polygon problem in a suitable way, a conditional probability mechanism is first introduced in order to accurately characterize the nature of the problem and establish the basis for further analysis. For the point-in-triangle problem, four quadratic forms in the joint coordinate vectors of a point and the vertices of the triangle are constructed. The probability model for the point-in-triangle problem is then established by the identification of signs of these quadratic form variables. Our basic idea for solving a general point-in-polygon (concave or convex) problem is to convert it into several point-in-triangle problems under a certain condition. By solving each point-in-triangle problem and summing the solutions, the probability model for a general point-in-polygon analysis is constructed. The simplicity of the algebra-based approach is that from using these quadratic forms, we can circumvent the complex geometrical relations between a random point and a random polygon (convex or concave) that one has to deal with in any geometric method when probability is computed. The theoretical arguments are substantiated by simulation experiments.
机译:这是一个由四部分组成的系列文章的第二篇,该系列文章涉及基于度量的地理信息系统(MBGIS)中错误分析的通用框架的开发。在本文中,我们讨论了在随机性(即随机测量误差(ME))下的多边形点分析问题。众所周知,覆盖是GIS中最重要的操作之一,多边形点分析是覆盖和查询问题的基本类别。尽管这是一个经典问题,但是尚未适当解决。由于ME位于多边形的顶点位置,因此生成的随机多边形可能会经历复杂的变化,因此多边形上的问题在理论上和实践上可能变得不明确。也就是说,如果多边形不简单并且无法形成区域,则有可能无法回答随机点是否在随机多边形内。但是,对于三角形问题,由于任何三角形总是形成内部或区域,因此无需考虑这种情况。为了以合适的方式表达一般的多边形问题,首先引入了条件概率机制,以准确地描述问题的性质并为进一步分析奠定基础。对于三角点问题,在点和三角形的顶点的联合坐标矢量中构造了四个二次形式。然后,通过识别这些二次形式变量的符号来建立三角形问题的概率模型。解决一般的多边形问题(凹面或凸面)的基本思想是在一定条件下将其转换为几个三角形的问题。通过解决每个三角形问题并汇总解决方案,构建了用于一般多边形分析的概率模型。基于代数的方法的简单之处在于,通过使用这些二次形式,我们可以规避在计算概率时任何几何方法中必须处理的随机点和随机多边形(凸或凹)之间的复杂几何关系。 。理论论证通过仿真实验得到证实。

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