Determining the provenance of land parcel polygons via machine learning

Vassilis Kaffes, G. Giannopoulos, Nontas Tsakonas, Spiros Skiadopoulos
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引用次数: 1

Abstract

An important task on land registration processes is to be able to determine the prevalent data provenance for a finalized polygon that represents a cadastral parcel, since the finalized polygon is derived by the examination of a set of initial polygons, drawn from several individual registers (databases). These registers might contain different, partially similar or conflicting information regarding the ownership, usage and polygon geometry of a cadastral parcel. In such cases, the cadastration expert either select one of of the initial geometries, or (in cases none of the initial accurately represents the finalized land parcel) creates a new geometry. Maintaining this provenance information is of high importance for further cadastration and validation/quality assessment processes; however, due to the gradual and long lasting nature of cadastration procedures, this information is absent from large parts of cadastral databases. In this paper, we present an approach for effectively classifying such land parcel polygons with respect to their provenance information. We propose a method that can produce highly accurate provenance recommendations based only on attributes derived from the geometry of a land parcel. In particular, we implement a set of spatial training features, capturing polygon properties and relations. These features are fed into several classification algorithms and are evaluated on a proprietary dataset of a cadastration company.
通过机器学习确定地块多边形的来源
土地登记过程的一项重要任务是能够确定代表地籍包的最终多边形的普遍数据来源,因为最终多边形是通过检查从几个单独的登记册(数据库)中提取的一组初始多边形得出的。这些登记簿可能包含关于地籍包的所有权、使用和多边形几何的不同、部分相似或冲突的信息。在这种情况下,地籍专家要么选择其中一个初始几何形状,要么创建一个新的几何形状(在没有一个初始几何形状准确地表示最终的地块的情况下)。维护这些来源信息对于进一步地籍和验证/质量评估过程非常重要;然而,由于地籍程序的渐进和持久的性质,这些信息在大部分地籍数据库中是缺失的。在本文中,我们提出了一种方法来有效地分类这些地块多边形相对于他们的来源信息。我们提出了一种方法,可以产生高度准确的来源建议,仅基于从一个地块的几何属性。特别是,我们实现了一组空间训练特征,捕获多边形属性和关系。这些特征被输入到几种分类算法中,并在地籍公司的专有数据集上进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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