分析地形因素和数据融合方法对智能滑坡探测不确定性的影响

IF 5.8 2区 工程技术 Q1 ENGINEERING, GEOLOGICAL
Rui Zhang, Jichao Lv, Yunjie Yang, Tianyu Wang, Guoxiang Liu
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引用次数: 0

摘要

目前,基于深度学习的智能滑坡检测建模研究主要集中在模型结构的改进和创新上。然而,地形因素和数据融合方法对模型预测精度的影响仍未得到充分探索。为了明确地形信息对滑坡探测模型的贡献,我们从川藏地区的 Planet 遥感图像和 DEM 数据中获取了 1022 个滑坡样本。我们研究了数字高程模型(DEM)、遥感图像融合和特征融合技术对模型滑坡预测精度的影响。首先,我们使用 Fast_SCNN、SegFormer 和 Swin Transformer 等模型分析了 DEM 数据在滑坡建模中的作用。接下来,我们使用双分支网络进行特征融合,以评估不同的数据融合方法。然后,我们对建模的不确定性进行了定量和定性分析,包括检查验证集准确性、测试集混淆矩阵、预测概率分布、分割结果和 Grad-CAM 结果。研究结果表明了以下几点:(1)将 DEM 数据与遥感图像融合后,模型预测更加可靠,增强了智能滑坡检测模型的鲁棒性;(2)通过双分支网络数据特征融合得到的结果比数据通道融合得到的结果精度略高;(3)在一致的数据条件下,深度卷积神经网络模型和注意力机制模型在预测滑坡方面表现出相当的能力。这些研究成果为基于深度学习的滑坡智能检测提供了宝贵的参考和启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Analysis of the impact of terrain factors and data fusion methods on uncertainty in intelligent landslide detection

Analysis of the impact of terrain factors and data fusion methods on uncertainty in intelligent landslide detection

Current research on deep learning-based intelligent landslide detection modeling has focused primarily on improving and innovating model structures. However, the impact of terrain factors and data fusion methods on the prediction accuracy of models remains underexplored. To clarify the contribution of terrain information to landslide detection modeling, 1022 landslide samples compiled from Planet remote sensing images and DEM data in the Sichuan–Tibet area. We investigate the impact of digital elevation models (DEMs), remote sensing image fusion, and feature fusion techniques on the landslide prediction accuracy of models. First, we analyze the role of DEM data in landslide modeling using models such as Fast_SCNN, the SegFormer, and the Swin Transformer. Next, we use a dual-branch network for feature fusion to assess different data fusion methods. We then conduct both quantitative and qualitative analyses of the modeling uncertainty, including examining the validation set accuracy, test set confusion matrices, prediction probability distributions, segmentation results, and Grad-CAM results. The findings indicate the following: (1) model predictions become more reliable when fusing DEM data with remote sensing images, enhancing the robustness of intelligent landslide detection modeling; (2) the results obtained through dual-branch network data feature fusion lead to slightly greater accuracy than those from data channel fusion; and (3) under consistent data conditions, deep convolutional neural network models and attention mechanism models show comparable capabilities in predicting landslides. These research outcomes provide valuable references and insights for deep learning-based intelligent landslide detection.

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来源期刊
Landslides
Landslides 地学-地球科学综合
CiteScore
13.60
自引率
14.90%
发文量
191
审稿时长
>12 weeks
期刊介绍: Landslides are gravitational mass movements of rock, debris or earth. They may occur in conjunction with other major natural disasters such as floods, earthquakes and volcanic eruptions. Expanding urbanization and changing land-use practices have increased the incidence of landslide disasters. Landslides as catastrophic events include human injury, loss of life and economic devastation and are studied as part of the fields of earth, water and engineering sciences. The aim of the journal Landslides is to be the common platform for the publication of integrated research on landslide processes, hazards, risk analysis, mitigation, and the protection of our cultural heritage and the environment. The journal publishes research papers, news of recent landslide events and information on the activities of the International Consortium on Landslides. - Landslide dynamics, mechanisms and processes - Landslide risk evaluation: hazard assessment, hazard mapping, and vulnerability assessment - Geological, Geotechnical, Hydrological and Geophysical modeling - Effects of meteorological, hydrological and global climatic change factors - Monitoring including remote sensing and other non-invasive systems - New technology, expert and intelligent systems - Application of GIS techniques - Rock slides, rock falls, debris flows, earth flows, and lateral spreads - Large-scale landslides, lahars and pyroclastic flows in volcanic zones - Marine and reservoir related landslides - Landslide related tsunamis and seiches - Landslide disasters in urban areas and along critical infrastructure - Landslides and natural resources - Land development and land-use practices - Landslide remedial measures / prevention works - Temporal and spatial prediction of landslides - Early warning and evacuation - Global landslide database
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