Integrating surface reflectance from multispectral satellite imagery and GIS-enabled LiDAR-derived techniques for sinkhole hazard detection

IF 2.8 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
Ronald J. Rizzo, L. Sebastian Bryson
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引用次数: 0

Abstract

Sinkhole hazard mapping using automated visual techniques is challenging because of the difficulty in distinguishing solution depressions from non-sinkhole depressions, such as streams, channels, or man-made circular structures in digital images. While past researchers have proposed semi-automated visual techniques for identifying solution depressions, these methods typically entail a manual visual processing step in which actual sinkhole formations are manually identified in a given geologic formation to establish a basic reference map that is subsequently applied to other areas in the specified geologic formation. This two-step process is lengthy and undermines the purpose of automated mapping. Using surface reflectance data from multispectral satellite imagery allows for identifying carbonate composition lithological units in a digital image. This study proposes integrating multispectral remote sensing with geological analysis to uncover crucial spectral patterns linked to surface mineralogy and environmental conditions associated with sinkhole formations. This integration aims to effectively identify the presence of sinkhole formations while excluding non-sinkhole artifacts from the analysis in a genuinely automated workflow. A crucial aspect of this study involved integrating high-resolution data from Landsat 8 Operational Land Imager (OLI) and Sentinel-2 Multispectral Instrument (MSI) imagery to distinguish rock units in a predominantly karst terrain for identifying surface depressions. In addition, we incorporated attributes covering morphometric, geomorphic, and physical soil properties derived from LiDAR-based topographic depressions. Prior studies have utilized supervised learning methods within machine learning frameworks on datasets containing confirmed sinkholes and non-sinkholes to improve the accuracy of mapping predictions. We utilized three machine learning techniques—Linear Regression, Random Forest, and Gradient Boosting—on the features database to conduct a comparative analysis, aiming to assess the enhancement of the methodology’s effectiveness compared to other studies. We aimed to improve the classification of crucial features and minimize the need for an additional manual visual inspection step to distinguish non-sinkhole formations from potential sinkhole boundaries identified. Among these methods, Random Forest proved to be the most appropriate for recognizing features that directly indicate sinkholes. This approach yielded an impressive Receiver Operating Characteristic (ROC) curve of 92%, showcasing its effectiveness in mapping sinkholes.

综合多光谱卫星图像的表面反射率和基于gis的激光雷达衍生技术,用于天坑危险检测
使用自动化视觉技术绘制天坑危害地图是一项挑战,因为很难区分解决方案洼地和非天坑洼地,例如数字图像中的溪流、渠道或人造圆形结构。虽然过去的研究人员提出了半自动化的视觉技术来识别溶蚀凹陷,但这些方法通常需要手动视觉处理步骤,在此步骤中,在给定的地质构造中手动识别实际的天坑形成,以建立基本的参考图,随后应用于指定地质构造中的其他区域。这两个步骤的过程很长,并且破坏了自动映射的目的。利用多光谱卫星图像的表面反射率数据,可以在数字图像中识别碳酸盐组成岩性单元。本研究建议将多光谱遥感与地质分析相结合,以揭示与地表矿物学和与天坑形成相关的环境条件相关的关键光谱模式。这种集成旨在有效地识别天坑地层的存在,同时在真正的自动化工作流程中排除非天坑工件。该研究的一个关键方面是整合来自Landsat 8操作陆地成像仪(OLI)和Sentinel-2多光谱仪(MSI)的高分辨率数据,以区分喀斯特地形中的岩石单元,从而识别地表凹陷。此外,我们还结合了基于激光雷达的地形洼地的形态、地貌和物理土壤属性。先前的研究利用机器学习框架中的监督学习方法,对包含已确认的天坑和非天坑的数据集进行学习,以提高映射预测的准确性。我们利用三种机器学习技术——线性回归、随机森林和梯度增强——对特征数据库进行了比较分析,旨在评估该方法与其他研究相比的有效性增强。我们的目标是改进关键特征的分类,并最大限度地减少额外的人工目视检查步骤,以区分非天坑地层和已确定的潜在天坑边界。在这些方法中,随机森林被证明是最适合识别直接指示天坑的特征。该方法产生了令人印象深刻的92%的接受者工作特征(ROC)曲线,显示了其在绘制天坑时的有效性。
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来源期刊
Environmental Earth Sciences
Environmental Earth Sciences 环境科学-地球科学综合
CiteScore
5.10
自引率
3.60%
发文量
494
审稿时长
8.3 months
期刊介绍: Environmental Earth Sciences is an international multidisciplinary journal concerned with all aspects of interaction between humans, natural resources, ecosystems, special climates or unique geographic zones, and the earth: Water and soil contamination caused by waste management and disposal practices Environmental problems associated with transportation by land, air, or water Geological processes that may impact biosystems or humans Man-made or naturally occurring geological or hydrological hazards Environmental problems associated with the recovery of materials from the earth Environmental problems caused by extraction of minerals, coal, and ores, as well as oil and gas, water and alternative energy sources Environmental impacts of exploration and recultivation – Environmental impacts of hazardous materials Management of environmental data and information in data banks and information systems Dissemination of knowledge on techniques, methods, approaches and experiences to improve and remediate the environment In pursuit of these topics, the geoscientific disciplines are invited to contribute their knowledge and experience. Major disciplines include: hydrogeology, hydrochemistry, geochemistry, geophysics, engineering geology, remediation science, natural resources management, environmental climatology and biota, environmental geography, soil science and geomicrobiology.
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