Spatial variation of feature density in multiscale topographic data

Q2 Agricultural and Biological Sciences Geography, Environment, Sustainability Pub Date : 2023-04-07 DOI:10.24057/2071-9388-2022-127
T. Samsonov, O. Yakimova, D. A. Potemkin, O. A. Guseva
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Abstract

Digital topographic maps are created in a series of scales from large to small, and the underlying spatial data is commonly organized as a multiscale database consisting of several levels of detail (LoDs). Spatial density of features (or spatial objects) in such database varies both between LoDs (coarser levels are less densely populated with features) and within each LoD (feature density changes over the area). While the former type of density variation is caused by generalization, the latter one is mainly conditioned by geographic location and its properties, such as landscape complexity or fraction of urban areas. Since topographic database LoDs are derived using different data sources and generalization techniques, there is a need for a method that can help with automated evaluation of resulting feature density in terms of its appropriateness for the specified location and level of detail. This paper provides such method by uncovering dependencies between the location properties and the density of spatial data in multiscale topographic database. Changes in feature density are modeled as a function of spatial (landscape complexity and terrain ruggedness) and non-spatial (land cover types ratio) measures estimated via independent data sources. Resulting model predicts how much higher or lower is the expected spatial density of features over the area in comparison to the average density for the LoD. This information can be used further to assess the fitness of the data to the desired level of detail of the topographic map.
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多尺度地形数据特征密度的空间变化
数字地形图是按从大到小的一系列比例尺创建的,其底层空间数据通常被组织为由多个细节级别(lod)组成的多比例尺数据库。这种数据库中的特征(或空间对象)的空间密度在LoD之间(较粗的级别的特征密度较低)和每个LoD内(特征密度随区域变化)都不同。前者是由综合效应引起的,后者主要受地理位置及其性质(如景观复杂性或城市面积比例)的制约。由于地形数据库lod是使用不同的数据源和泛化技术导出的,因此需要一种方法,可以根据其对指定位置和详细程度的适当性来帮助自动评估所得到的特征密度。本文通过揭示多尺度地形数据库中空间数据的位置属性与密度之间的依赖关系,提供了这种方法。特征密度的变化被建模为通过独立数据源估计的空间(景观复杂性和地形崎岖度)和非空间(土地覆盖类型比)措施的函数。由此产生的模型预测与LoD的平均密度相比,该区域上特征的预期空间密度高或低多少。这些信息可以进一步用于评估数据与地形图所需详细程度的适合程度。
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来源期刊
Geography, Environment, Sustainability
Geography, Environment, Sustainability Social Sciences-Geography, Planning and Development
CiteScore
2.50
自引率
0.00%
发文量
37
审稿时长
12 weeks
期刊介绍: Journal “GEOGRAPHY, ENVIRONMENT, SUSTAINABILITY” is founded by the Faculty of Geography of Lomonosov Moscow State University, The Russian Geographical Society and by the Institute of Geography of RAS. It is the official journal of Russian Geographical Society, and a fully open access journal. Journal “GEOGRAPHY, ENVIRONMENT, SUSTAINABILITY” publishes original, innovative, interdisciplinary and timely research letter articles and concise reviews on studies of the Earth and its environment scientific field. This goal covers a broad spectrum of scientific research areas (physical-, social-, economic-, cultural geography, environmental sciences and sustainable development) and also considers contemporary and widely used research methods, such as geoinformatics, cartography, remote sensing (including from space), geophysics, geochemistry, etc. “GEOGRAPHY, ENVIRONMENT, SUSTAINABILITY” is the only original English-language journal in the field of geography and environmental sciences published in Russia. It is supposed to be an outlet from the Russian-speaking countries to Europe and an inlet from Europe to the Russian-speaking countries regarding environmental and Earth sciences, geography and sustainability. The main sections of the journal are the theory of geography and ecology, the theory of sustainable development, use of natural resources, natural resources assessment, global and regional changes of environment and climate, social-economical geography, ecological regional planning, sustainable regional development, applied aspects of geography and ecology, geoinformatics and ecological cartography, ecological problems of oil and gas sector, nature conservations, health and environment, and education for sustainable development. Articles are freely available to both subscribers and the wider public with permitted reuse.
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