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    基于多层分级约束的缓变型黄土滑坡识别研究

    Identification of slow-moving loess landslides based on hierarchical constraints

    • 摘要: 黄土高原地区是我国滑坡灾害的高发区,受极端天气降雨和人类工程活动的影响,滑坡灾害频发,严重威胁人民的生命和财产安全。该文提出一种多层分级约束的缓变型滑坡识别方法,首先通过深度学习知识蒸馏方法构建轻量化网络模型,快速识别合成孔径雷达干涉测量(Synthetic Aperture Radar Interferometry, InSAR)形变区,蒸馏后的模型识别精度较原来教师模型提高3%,F1值提升2%,模型体积下降50.1%。针对识别的InSAR形变区内包含大量地面沉降、采矿等非滑坡形变问题,引入基于矿致负样本和斜坡单元的2种约束方法,进一步剔除非滑坡形变,实现了黄土地区缓变型滑坡的准确识别,对地质灾害监测与预警具有重要意义。

       

      Abstract: Influenced by extreme weather events, especially rainstorms, and anthropogenic engineering activities, the Loess Plateau region in China is subjected to frequent landslides, which pose a significant threat to the safety of human life and property. This study proposes a hierarchical constraint-based method for identifying slow-moving loess landslides. First, a lightweight network model is constructed through knowledge distillation in deep learning to rapidly identify deformation areas from interferometric synthetic aperture radar (InSAR) data. Compared to the original teacher model, the distilled model enhances the identification accuracy by 3%, increases the F1-score by 2%, and reduces the model size by 50.1%. Given that the identified deformation areas from InSAR data contain a large quantity of non-landslide deformations such as land subsidence and mining-induced deformations, two constraint approaches, namely mining-induced negative sample filtering and slope unit-based constraint, are introduced to further exclude non-landslide deformations. The proposed method enables the accurate identification of slow-moving landslides in loess regions, holding great importance for the monitoring and early warning of geological hazards.

       

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