鲍宽乐, 许文波, 王庆同. 2023: 基于机器学习的Landsat数据地层信息提取——以西南天山柯坪地区为例. 地质通报, 42(4): 637-645. DOI: 10.12097/j.issn.1671-2552.2023.04.012
    引用本文: 鲍宽乐, 许文波, 王庆同. 2023: 基于机器学习的Landsat数据地层信息提取——以西南天山柯坪地区为例. 地质通报, 42(4): 637-645. DOI: 10.12097/j.issn.1671-2552.2023.04.012
    BAO Kuanle, XU Wenbo, WANG Qingtong. 2023: Stratigraphic information extraction from landsat data based on machine learning—a case study of the Keping area of southwest Tianshan Mountains. Geological Bulletin of China, 42(4): 637-645. DOI: 10.12097/j.issn.1671-2552.2023.04.012
    Citation: BAO Kuanle, XU Wenbo, WANG Qingtong. 2023: Stratigraphic information extraction from landsat data based on machine learning—a case study of the Keping area of southwest Tianshan Mountains. Geological Bulletin of China, 42(4): 637-645. DOI: 10.12097/j.issn.1671-2552.2023.04.012

    基于机器学习的Landsat数据地层信息提取——以西南天山柯坪地区为例

    Stratigraphic information extraction from landsat data based on machine learning—a case study of the Keping area of southwest Tianshan Mountains

    • 摘要: 当前机器学习方法不断创新发展,为遥感数据的分析利用提供了很好的平台。结合西南天山柯坪地区沉积岩的典型地质特征,针对1:5万区域地质调查数据,利用Landsat 8数据9个波段的遥感信息进行机器学习方法解译。为增强机器学习过程中参与变量数目,在原始9波段数据的基础上分别采用比值法增强方式、主成分分析法增强方式进行数据叠加。为减弱地质体内部纹理信息,同时不影响地质体之间的边界,笔者采用双边滤波的形式对遥感数据进行进一步处理。选用的极限随机树方法、直方梯度增强随机树、随机森林3种机器学习方法整体识别精度均超过93%,尤其是极限随机树方法达到94.18%。本研究方法可用在其他地质信息解译、地质填图中,值得推广。

       

      Abstract: In the current era of artificial intelligence, machine learning methods are constantly innovating and developing.It provides a good platform for effectively analyzing and utilizing of remote sensing data.Combined with the typical geological characteristics of sedimentary rocks in Keping area of southwest Tianshan Mountains, in this paper, remote sensing data from 9 bands of Landsat 8 data were used for machine learning interpretation.In order to enhance the number of variables involved in the process of machine learning, ratio method and principal component analysis method were used to enhance the data superposition based on the original 9-band data.In order to weaken the internal texture information of geological bodies without affecting the boundary between geological bodies, bilateral filtering was used to further process remote sensing data.Three machine learning methods, Extra Trees, Hist Gradient Boosting and Random Forest, were selected.Through experiments, the overall recognition accuracy exceeded 93%, especially 94.18% for the Extra Trees method.It is worth popularizing the research method of this paper in other geological information interpretations and geological mapping.

       

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