What is the actual composition of specific land cover? An evaluation of the accuracy at a national scale – Remote sensing in comparison to topographic land cover

IF 3.8 Q2 ENVIRONMENTAL SCIENCES
Joanna Bihałowicz, Wioletta Rogula-Kozłowska, Paweł Gromek, Jan Stefan Bihałowicz
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引用次数: 0

Abstract

Satellite imagery allows us to capture and collect land cover information for increasingly large areas. This allows us to represent current land cover on maps in a simple and standardized way; however, any land cover determined in this way is subject to some algorithmic uncertainty. This paper aims, for the first time, to indicate the magnitude of this uncertainty through the empirical probability distribution of a given land cover at a given location. By analyzing 3 data sources, i.e. the Corine Land Cover map, the POLSA land cover map and the classic map - the BDOT10k database of topographic objects. Empirical distributions of the occurrence of land cover class data in areas with a given land use on a topographic map were determined. The work was carried out on a large scale, i.e. on the maximum possible sample for Poland, i.e. on the area of the whole country. This makes it possible to introduce and quantify uncertainties. Spatial analyses were carried out using satellite-based methods to determine land cover or using a topographic map. This work and its results will be useful to all users who want to assess the occurrence of a phenomenon in a given area, taking into account the uncertainty of the land cover, and thus obtain more accurate and reliable results. It also provides, for the first time, a methodology for verifying such map correspondences, which can be replicated in work by other researchers, using the confusion matrix and as evaluation metrics the true positive rate (TPR) and weighted accuracy have been adopted. The paper proposes a link between land cover classes in all databases. It was shown that the TPR for BDOT10k was higher than 50% only with CLC Level 1 (72.0%) and POLSA Land Cover (61%), while the TPR for RS classes for each remote sensing data was always higher than 60% with BDOT10k. The class with the highest remote sensing classes was related to water, especially marine (92.0% for POLSA and 85.3% for CLC level 3), arable land (98% for POLSA, lowest for CLC level 3 (80%), and forests (coniferous POLSA – 89%, CLC level 1 and 2–85%), while low values were obtained for wetlands, peatbogs. The authors do not state which land cover approach is better, as each may have multiple uses, but the values presented in this work must raise awareness of uncertainties in land cover and critical implementation in decision-making processes for multiple areas of human activity. The study provides ready-to-use values of the probability of a given land cover class being present on a topographic map, given that remote sensing has classified it as such. These functions can also be used in reverse, to determine the probability of a given land cover class being present in remote sensing, given that a specific class has been identified on a topographic map. The results of the consistency assessment, with the composition structure, can be used by a wide range of users, including public administration, land managers, land architects, public services, academia and individuals.

具体土地覆被的实际构成是什么?全国范围内的准确性评估 - 遥感与地形土地覆被的比较
卫星图像使我们能够捕捉和收集越来越大面积的土地覆被信息。这使我们能够以简单和标准化的方式在地图上表示当前的土地覆被情况;然而,以这种方式确定的任何土地覆被都会受到一些算法不确定性的影响。本文首次旨在通过给定地点给定土地覆被的经验概率分布来说明这种不确定性的大小。通过分析 3 个数据源,即 Corine 土地覆被图、POLSA 土地覆被图和经典地图--BDOT10k 地形对象数据库。确定了地形图上特定土地利用区域土地覆被等级数据出现的经验分布。这项工作是在大规模范围内进行的,即在波兰最大可能的样本范围内,也就是在全国范围内进行的。这使得引入和量化不确定性成为可能。空间分析是使用卫星方法确定土地覆盖或使用地形图进行的。这项工作及其结果将对所有希望在考虑到土地覆被的不确定性的情况下评估特定地区某种现象的发生率,从而获得更准确、更可靠的结果的用户有所帮助。它还首次提供了一种验证这种地图对应关系的方法,其他研究人员可以利用混淆矩阵复制这种方法,并采用真阳性率(TPR)和加权准确率作为评估指标。论文提出了所有数据库中土地覆被类别之间的联系。结果表明,BDOT10k 中只有 CLC Level 1(72.0%)和 POLSA Land Cover(61%)的真阳性率高于 50%,而 BDOT10k 中每个遥感数据的 RS 类别的真阳性率始终高于 60%。遥感等级最高的类别与水有关,尤其是海洋(POLSA 为 92.0%,CLC 3 级为 85.3%)、耕地(POLSA 为 98%,CLC 3 级最低(80%))和森林(针叶林 POLSA - 89%,CLC 1 级和 2-85%),而湿地、泥炭沼的数值较低。作者没有说明哪种土地覆被方法更好,因为每种方法都可能有多种用途,但这项工作中提出的数值必须提高人们对土地覆被不确定性的认识,以及在人类活动的多个领域的决策过程中的关键实施。这项研究提供了遥感分类后地形图上出现特定土地覆被类别概率的即用值。这些函数还可反向使用,根据地形图上已确定的特定类别,确定遥感中出现特定土地覆被类别的概率。具有组成结构的一致性评估结果可用于广泛的用户,包括公共管理部门、土地管理者、土地建筑师、公共服务部门、学术界和个人。
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来源期刊
CiteScore
8.00
自引率
8.50%
发文量
204
审稿时长
65 days
期刊介绍: The journal ''Remote Sensing Applications: Society and Environment'' (RSASE) focuses on remote sensing studies that address specific topics with an emphasis on environmental and societal issues - regional / local studies with global significance. Subjects are encouraged to have an interdisciplinary approach and include, but are not limited by: " -Global and climate change studies addressing the impact of increasing concentrations of greenhouse gases, CO2 emission, carbon balance and carbon mitigation, energy system on social and environmental systems -Ecological and environmental issues including biodiversity, ecosystem dynamics, land degradation, atmospheric and water pollution, urban footprint, ecosystem management and natural hazards (e.g. earthquakes, typhoons, floods, landslides) -Natural resource studies including land-use in general, biomass estimation, forests, agricultural land, plantation, soils, coral reefs, wetland and water resources -Agriculture, food production systems and food security outcomes -Socio-economic issues including urban systems, urban growth, public health, epidemics, land-use transition and land use conflicts -Oceanography and coastal zone studies, including sea level rise projections, coastlines changes and the ocean-land interface -Regional challenges for remote sensing application techniques, monitoring and analysis, such as cloud screening and atmospheric correction for tropical regions -Interdisciplinary studies combining remote sensing, household survey data, field measurements and models to address environmental, societal and sustainability issues -Quantitative and qualitative analysis that documents the impact of using remote sensing studies in social, political, environmental or economic systems
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