Topographic analysis supported by a knowledge graph: A case of ridge landscape recognition

Hao Wu, Huafei Yu, Tinghua Ai
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Abstract

Abstract. The intrinsic connections between geographical elements are important for uncovering hidden geo-scientific laws. However, current research on terrain and landform analysis mainly focuses on the landscapes themselves, with insufficient attention to the connections between them. Therefore, this study proposes a knowledge graph approach based on geographical units (TUKG). Specifically, fi-negrained geographical units are extracted based on three types of data: remote sensing images, DEM, and contour lines. These units serve as entity nodes in the TUKG and are described by their slope and aspect. Additionally, point-based and line-based connections between geographical units are proposed based on spatial topological relationships, serving as connections between entity nodes in the TUKG. Finally, inference rules for ridge landscape problems are extracted from typical cases of ridge land-scapes to support reasoning in the TUKG. Experimental results conducted in the Yarlung Zangbo Grand Canyon in southwest China demonstrate that the TUKG can accurately infer ridge landscapes and has the potential to identify more complex terrain landscapes.
知识图谱支持的地形分析:山脊景观识别案例
摘要地理要素之间的内在联系对于揭示隐藏的地理科学规律非常重要。然而,目前有关地形和地貌分析的研究主要集中在地貌本身,对地貌之间的联系关注不够。因此,本研究提出了一种基于地理单元的知识图谱方法(TUKG)。具体来说,该方法基于遥感图像、DEM 和等高线三种数据提取细粒度地理单元。这些单元作为 TUKG 中的实体节点,通过坡度和坡向进行描述。此外,还根据空间拓扑关系提出了地理单元之间基于点和线的连接,作为 TUKG 实体节点之间的连接。最后,从山脊地貌的典型案例中提取了山脊地貌问题的推理规则,为 TUKG 的推理提供支持。在中国西南雅鲁藏布大峡谷进行的实验结果表明,TUKG 可以准确推断山脊地貌,并有潜力识别更复杂的地形地貌。
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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