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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Land use mapping using Sentinel-1 and Sentinel-2 time series in a heterogeneous landscape in Niger, Sahel
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Land use mapping using Sentinel-1 and Sentinel-2 time series in a heterogeneous landscape in Niger, Sahel

机译:土地利用映射使用Sentinel-1和Sentinel-2时间序列在尼日尔,Sahel的异构景观中

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Land use maps describe the spatial distribution of natural resources, cultural landscapes, and human settlements, serving as an important planning tool for decision makers. In the Sahel area, such information is valuable for risk management and mitigation in challenging sectors like food security, flood control, and urban planning. Due to its uniform quality across large areas in regular time steps, remote sensing imageries are essential input for producing land use maps. However, spatially and temporally heterogeneous landscapes in Sahel make classification of landscape features difficult. Our overall goal is to create an accurate, high resolution land use map covering Niamey, the capital of Niger and its surroundings which represents the unique landscape features in the Sahel using Sentinel-1 and Sentinel-2 archives. We assessed the performance of three commonly used classifiers (i.e. Maximum Likelihood (ML), Support Vector Machine (SVM) and Random Forest (RF)) for land use classification. To understand the utility of different features from Sentinel-1 and Sentinel-2 imagery for classification, we performed feature selection and compared mapping accuracies with and without feature selection. To leverage the strength of each classifier, we developed a classifier ensemble (CE) map based on the mapping accuracy of each land use class and each classifier. The results of this study showed that the performance of individual classifiers depends on feature selection method and accuracies can be improved by combining different classifiers. The ensemble map had an overall accuracy of 72 +/- 3.9% and it was found superior in terms of accuracy particularly with respect to built-up areas compared to the existing global land cover products in the study area. Our classification scheme also better characterized the regional environment in the Sahel. For example, we mapped rice and bare rocks that have important regional implication, which are not included in the existing products. Overall, our approach highlights the potentiality of combining multi-modal imageries and multiple classifiers for mapping a heterogenous environment such as the Sahel with high spatial resolution.
机译:土地利用地图描述了自然资源,文化景观和人类住区的空间分布,作为决策者的重要规划工具。在萨赫勒地区,这些信息对于粮食安全,防洪和城市规划等具有挑战性的部门的风险管理和缓解。由于其在常规时间步长的大面积均匀的质量,遥感成像是生产土地使用地图的必要输入。然而,Sahel中的空间和时间异构风景难以进行景观特征的分类。我们的整体目标是创建一个准确的高分辨率地图,覆盖尼亚美,尼日尔的首都及其周围环境,代表了Sahel-1和Sentinel-2档案的萨赫尔的独特景观功能。我们评估了三种常用的分类器的性能(即最大可能性(ML),支持向量机(SVM)和随机森林(RF)),用于土地使用分类。要了解来自Sentinel-1和Sentinel-2图像的不同特征的实用性进行分类,我们执行了功能选择,并比较了具有和无功能选择的映射精度。为了利用每个分类器的强度,我们根据每个土地使用类和每个分类器的映射精度开发了分类器集合(CE)地图。该研究的结果表明,各种分类器的性能取决于特征选择方法,通过组合不同的分类器可以提高精度。集合映射的整体准确性为72 +/- 3.9%,与研究区现有的全球陆地覆盖产品相比,特别是关于建筑面积的准确性卓越地区。我们的分类方案还更好地表征了萨赫尔的区域环境。例如,我们映射了具有重要区域含义的米饭和裸岩,这些含义不包括在现有产品中。总的来说,我们的方法突出了组合多模态成像和多个分类器来映射诸如具有高空间分辨率的异形环境的潜力。

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