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Quantifying uncertainty in remote sensing-based urban land-use mapping

机译:量化基于遥感的城市土地利用图的不确定性

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Land-use/land-cover information constitutes an important component in the calibration of many urban growth models. Typically, the model building involves a process of historic calibration based on time series of land-use maps. Medium-resolution satellite imagery is an interesting source for obtaining data on land-use change, yet inferring information on the use of urbanised spaces from these images is a challenging task that is subject to different types of uncertainty. Quantifying and reducing the uncertainties in land-use mapping and land-use change model parameter assessment are therefore crucial to improve the reliability of urban growth models relying on these data. In this paper, a remote sensing-based land-use mapping approach is adopted, consisting of two stages: (i) estimating impervious surface cover at subpixel level through linear regression unmixing and (ii) inferring urban land use from urban form using metrics describing the spatial structure of the built-up area, together with address data. The focus lies on quantifying the uncertainty involved in this approach. Both stages of the land-use mapping process are subjected to Monte Carlo simulation to assess their relative contribution to and their combined impact on the uncertainty in the derived land-use maps. The robustness to uncertainty of the land-use mapping strategy is addressed by comparing the most likely land-use maps obtained from the simulation with the original land-use map, obtained without taking uncertainty into account. The approach was applied on the Brussels-Capital Region and the central part of the Flanders region (Belgium), covering the city of Antwerp, using a time series of SPOT data for 1996, 2005 and 2012. Although the most likely land-use map obtained from the simulation is very similar to the original land-use map - indicating absence of bias in the mapping process - it is shown that the errors related to the impervious surface sub-pixel fraction estimation have a strong impact on the land-use map's uncertainty. Hence, uncertainties observed in the derived land-use maps should be taken into account when using these maps as an input for modelling of urban growth.
机译:土地使用/土地覆盖信息是许多城市增长模型校准的重要组成部分。通常,模型构建涉及基于土地使用图的时间序列的历史性校准过程。中分辨率卫星图像是获取土地用途变化数据的有趣来源,但是从这些图像中推断出有关城市化空间利用的信息是一项具有挑战性的任务,它会受到不同类型的不确定性的影响。因此,量化和减少土地利用图谱和土地利用变化模型参数评估中的不确定性对于依靠这些数据来提高城市增长模型的可靠性至关重要。本文采用基于遥感的土地利用制图方法,包括两个阶段:(i)通过线性回归分解来估计亚像素级的不透水表面覆盖;(ii)使用描述指标的方法从城市形式推断城市土地利用建成区的空间结构以及地址数据。重点在于量化此方法涉及的不确定性。土地利用制图过程的两个阶段都经过蒙特卡洛模拟,以评估它们对得出的土地利用图的不确定性的综合影响及其对不确定性的综合影响。通过比较从模拟获得的最有可能的土地利用图与未考虑不确定性而获得的原始土地利用图,可以解决土地利用图策略对不确定性的鲁棒性。使用1996、2005和2012年的SPOT时序数据,该方法已应用于布鲁塞尔首都地区和法兰德斯中部地区(比利时),涵盖了安特卫普市。尽管最可能的土地利用图从模拟获得的结果与原始土地利用图非常相似-表示映射过程中没有偏差-表明与不可渗透的表面亚像素分数估算有关的误差对土地利用图的影响很大不确定。因此,当使用这些地图作为城市增长模型的输入时,应考虑在衍生的土地利用地图中观察到的不确定性。

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