Landslide Recognition Based on Machine Learning Considering Terrain Feature Fusion

IF 2.8 3区 地球科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS ISPRS International Journal of Geo-Information Pub Date : 2024-08-28 DOI:10.3390/ijgi13090306
Jincan Wang, Zhiheng Wang, Liyao Peng, Chenzhihao Qian
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Abstract

Landslides are one of the major disasters that exist worldwide, posing a serious threat to human life and property safety. Rapid and accurate detection and mapping of landslides are crucial for risk assessment and humanitarian assistance in affected areas. To achieve this goal, this study proposes a landslide recognition method based on machine learning (ML) and terrain feature fusion. Taking the Dawan River Basin in Detuo Township and Tianwan Yi Ethnic Township as the research area, firstly, landslide-related data were compiled, including a landslide inventory based on field surveys, satellite images, historical data, high-resolution remote sensing images, and terrain data. Then, different training datasets for landslide recognition are constructed, including full feature datasets that fusion terrain features and remote sensing features and datasets that only contain remote sensing features. At the same time, different ratios of landslide to non-landslide (or positive/negative, P/N) samples are set in the training data. Subsequently, five ML algorithms, including Extreme Gradient Boost (XGBoost), Adaptive Boost (AdaBoost), Light Gradient Boost (LightGBM), Random Forest (RF), and Convolutional Neural Network (CNN), were used to train each training dataset, and landslide recognition was performed on the validation area. Finally, accuracy (A), precision (P), recall (R), F1 score (F1), and intersection over union (IOU) were selected to evaluate the landslide recognition ability of different models. The research results indicate that selecting ML models suitable for the study area and the ratio of the P/N samples can improve the A, R, F1, and IOU of landslide identification results, resulting in more accurate and reasonable landslide identification results; Fusion terrain features can make the model recognize landslides more comprehensively and align better with the actual conditions. The best-performing model in the study is LightGBM. When the input data includes all features and the P/N sample ratio is optimal, the A, P, R, F1, and IOU of landslide recognition results for this model are 97.47%, 85.40%, 76.95%, 80.95%, and 71.28%, respectively. Compared to the landslide recognition results using only remote sensing features, this model shows improvements of 4.51%, 35.66%, 5.41%, 22.27%, and 29.16% in A, P, R, F1, and IOU, respectively. This study serves as a valuable reference for the precise and comprehensive identification of landslide areas.
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基于机器学习和地形特征融合的滑坡识别技术
山体滑坡是世界范围内存在的主要灾害之一,对人类生命和财产安全构成严重威胁。快速准确地检测和绘制滑坡地图对于灾区的风险评估和人道主义援助至关重要。为实现这一目标,本研究提出了一种基于机器学习(ML)和地形特征融合的滑坡识别方法。以德托乡和田湾彝族乡的大湾河流域为研究区域,首先编制了滑坡相关数据,包括基于实地调查的滑坡清单、卫星图像、历史数据、高分辨率遥感图像和地形数据。然后,构建不同的滑坡识别训练数据集,包括融合地形特征和遥感特征的全特征数据集和只包含遥感特征的数据集。同时,在训练数据中设置不同比例的滑坡与非滑坡样本(或称正/负样本,P/N)。随后,使用极端梯度提升(XGBoost)、自适应提升(AdaBoost)、轻梯度提升(LightGBM)、随机森林(RF)和卷积神经网络(CNN)等五种 ML 算法对每个训练数据集进行训练,并在验证区进行滑坡识别。最后,选择准确率(A)、精确率(P)、召回率(R)、F1得分(F1)和交集大于联合(IOU)来评价不同模型的滑坡识别能力。研究结果表明,选择适合研究区域的 ML 模型和 P/N 样本比,可以提高滑坡识别结果的 A、R、F1 和 IOU,使滑坡识别结果更加准确合理;融合地形特征可以使模型识别滑坡更加全面,更符合实际情况。研究中表现最好的模型是 LightGBM。当输入数据包含所有特征且 P/N 样本比最优时,该模型的滑坡识别结果的 A、P、R、F1 和 IOU 分别为 97.47%、85.40%、76.95%、80.95% 和 71.28%。与仅使用遥感特征的滑坡识别结果相比,该模型的 A、P、R、F1 和 IOU 分别提高了 4.51%、35.66%、5.41%、22.27% 和 29.16%。这项研究为精确、全面地识别滑坡区域提供了宝贵的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ISPRS International Journal of Geo-Information
ISPRS International Journal of Geo-Information GEOGRAPHY, PHYSICALREMOTE SENSING&nb-REMOTE SENSING
CiteScore
6.90
自引率
11.80%
发文量
520
审稿时长
19.87 days
期刊介绍: ISPRS International Journal of Geo-Information (ISSN 2220-9964) provides an advanced forum for the science and technology of geographic information. ISPRS International Journal of Geo-Information publishes regular research papers, reviews and communications. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. The 2018 IJGI Outstanding Reviewer Award has been launched! This award acknowledge those who have generously dedicated their time to review manuscripts submitted to IJGI. See full details at http://www.mdpi.com/journal/ijgi/awards.
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