定量定性地理空间数据:一种概率方法

Georgios Skoumas, D. Pfoser, Anastasios Kyrillidis
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引用次数: 16

摘要

生活在数据泛滥的时代,我们见证了网络内容的爆炸式增长,这主要是由于用户生成内容(UGC)的大量可用性。在这项工作中,我们特别考虑了地理空间信息提取和表示的问题,人们可以利用不同的信息源(如图像和音频数据,文本数据等),超越传统的志愿地理信息。我们的目标是包括可用的叙事信息,以更好地解释地理空间关系:由于空间推理是人类认知的基本形式,表达此类经验的叙事通常包含定性空间数据,即空间对象和空间关系。为此,我们制定了一种定量的方法来表示从UGC中提取的文本形式的定性空间关系。提出的方法基于多个文本观测来量化这种关系。这些观测提供了距离和方向特征,这些特征被基于贪婪期望最大化(EM)的算法用来推断预定义空间关系上的概率分布;后者表示在用户定义的概率假设下的量化关系。我们使用来自实际旅游博客文本语料库的真实UGC数据来评估所提议方法的适用性和质量。为了验证结果的质量,我们生成了基于网格的“地图”,将各种关系的空间范围可视化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On quantifying qualitative geospatial data: a probabilistic approach
Living in the era of data deluge, we have witnessed a web content explosion, largely due to the massive availability of User-Generated Content (UGC). In this work, we specifically consider the problem of geospatial information extraction and representation, where one can exploit diverse sources of information (such as image and audio data, text data, etc), going beyond traditional volunteered geographic information. Our ambition is to include available narrative information in an effort to better explain geospatial relationships: with spatial reasoning being a basic form of human cognition, narratives expressing such experiences typically contain qualitative spatial data, i.e., spatial objects and spatial relationships. To this end, we formulate a quantitative approach for the representation of qualitative spatial relations extracted from UGC in the form of texts. The proposed method quantifies such relations based on multiple text observations. Such observations provide distance and orientation features which are utilized by a greedy Expectation Maximization-based (EM) algorithm to infer a probability distribution over predefined spatial relationships; the latter represent the quantified relationships under user-defined probabilistic assumptions. We evaluate the applicability and quality of the proposed approach using real UGC data originating from an actual travel blog text corpus. To verify the quality of the result, we generate grid-based "maps" visualizing the spatial extent of the various relations.
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