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首页> 外文期刊>Remote Sensing >A Synergetic Analysis of Sentinel-1 and -2 for Mapping Historical Landslides Using Object-Oriented Random Forest in the Hyrcanian Forests
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A Synergetic Analysis of Sentinel-1 and -2 for Mapping Historical Landslides Using Object-Oriented Random Forest in the Hyrcanian Forests

机译:面向对象的随机森林在Hyrcanian森林中绘制历史滑坡的Sentinel-1和-2的协同分析

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摘要

Despite increasing efforts in the mapping of landslides using Sentinel-1 and -2, research on their combination for discerning historical landslides in forest areas is still lacking, particularly using object-oriented machine learning approaches. This study was accomplished to test the efficiency of Sentinel-derived features and digital elevation model (DEM) derivatives for mapping old and new landslides, using object-oriented random forest. Two forest subsets were selected including a protected and non-protected forest in northeast Iran. Landslide samples were obtained from CORONA images and aerial photos (old landslides), and also field mensuration and high-resolution images (new landslides). Segment objects were generated from a set combination of Sentinel-1A, Sentinel-2A, and some topographic-derived indices using multiresolution segmentation algorithm. Various object features were derived from the main channels of Sentinel images and DEM derivatives in the seven main groups, including spectral layers, spectral indices, geometric, contextual, textural, topographic, and hydrologic features. A single database was created, including landslide samples and Sentinel- and DEM-derived object features. Roughly 20% of landslide-affected objects and non-landslide-affected objects were randomly selected as an input for training the random forest classifier. Two-thirds of the selected objects were assigned as learning samples for classification, and the remainder were used for testing the accuracy of landslide and non-landslide classification. Results indicated that: (1) The sensitivity of mapping historical landslides was 86.6% and 80.3% in the protected and non-protected forests, respectively; (2) the object features of Sentinel-2A and DEM obtained the highest importance with the total scores of 55.6% and 32%, respectively in the protected forests, and 65.4% and 21% respectively in the non-protected forests; (3) the features derived from the combination of Sentinel-1 and -2A demonstrated a total importance of 10% for mapping new landslides; and (4) textural features were obtained in approximately two-thirds of the total scores for mapping new landslides, however a combination of topographic, spectral, textural, and contextual features were the effective predictors for mapping old landslides. This research proposes applying a synergetic analysis of Sentinel- and DEM-derived features for mapping historical landslides; however, there are no uniformly pre-defined influential variables for mapping historical landslides in different forest areas.
机译:尽管在使用Sentinel-1和-2进行滑坡测绘方面付出了更多的努力,但仍缺乏对它们的组合以识别森林地区历史滑坡的研究,特别是使用面向对象的机器学习方法。这项研究的完成是为了测试使用面向对象的随机森林,用Sentinel衍生的特征和数字高程模型(DEM)衍生物绘制旧滑坡和新滑坡的效率。选择了两个森林子集,包括伊朗东北部的一个受保护和不受保护的森林。滑坡样本是从CORONA影像和航拍照片(旧滑坡)以及野外测量和高分辨率影像(新滑坡)中获得的。使用多分辨率分割算法从Sentinel-1A,Sentinel-2A和一些地形派生的索引的组合组合生成分段对象。从Sentinel图像的主要渠道和DEM衍生品的七个主要组中得出了各种对象特征,包括光谱层,光谱指数,几何,背景,纹理,地形和水文特征。创建了一个数据库,其中包括滑坡样本以及Sentinel和DEM派生的对象特征。随机选择了大约20%的受滑坡影响的对象和未受滑坡影响的对象作为训练随机森林分类器的输入。选定对象的三分之二被分配为学习样本进行分类,其余的用于测试滑坡和非滑坡分类的准确性。结果表明:(1)在保护林和非保护林中,绘制历史滑坡的敏感性分别为86.6%和80.3%; (2)Sentinel-2A和DEM的目标特征获得了最高的重视,在保护林中总得分分别为55.6%和32%,在非保护林中总得分分别为65.4%和21%; (3)从Sentinel-1和-2A的组合得出的特征显示出对绘制新滑坡的总重要性为10%; (4)在绘制新滑坡的总得分中,约有三分之二获得了纹理特征,但是地形,频谱,纹理和上下文特征的组合是绘制旧滑坡的有效预测指标。这项研究建议对地形滑坡进行历史分析,并应用Sentinel和DEM衍生特征的协同分析。但是,没有用于映射不同森林地区历史滑坡的统一预先定义的影响变量。

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