利用多特征深度学习模型快速自动检测同震滑坡

IF 6 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Science China Earth Sciences Pub Date : 2024-06-20 DOI:10.1007/s11430-023-1306-8
Wenchao Huangfu, Haijun Qiu, Peng Cui, Dongdong Yang, Ya Liu, Bingzhe Tang, Zijing Liu, Mohib Ullah
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引用次数: 0

摘要

同震滑坡探测对于地震发生后的灾后救援和风险评估至关重要。然而,包括道路和裸露土地在内的各种地面物体都具有与共震滑坡相似的光谱特征,因此难以快速准确地收集信息并评估其影响。因此,一种基于深度学习模型(名为 ENVINet5)的多特征自动检测方法(ENVINet5_MF)被提出来解决这一问题,并提高了共震滑坡的检测精度。ENVINet5_MF 方法在同震滑坡检测方面具有优势,因为它具有滑坡增益指数(LGI),能有效消除裸地和道路的光谱干扰。我们使用在日本北海道和中国缅岭获取的多时相 PlanetScope 图像进行了两次实验。精度评估和合理性分析表明,ENVINet5_MF 的性能优于其他方法,而且 ENVINet5_MF 检测到的共震滑坡区域与地面参考数据最为一致。研究结果表明,ENVINet5_MF可为同震滑坡探测提供一种高效、准确的方法,以确保对同震滑坡灾害的快速响应。
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Quick and automatic detection of co-seismic landslides with multi-feature deep learning model

Co-seismic landslide detection is essential for post-disaster rescue and risk assessment after an earthquake event. However, a variety of ground objects, including roads and bare land, have spectral characteristics similar to those of co-seismic landslides, making it difficult to gather information and assess their impact rapidly and accurately. Therefore, an automatic detection method based on a deep learning model, named ENVINet5, with multiple features (ENVINet5_MF) was proposed to solve this problem and improve the detection accuracy of co-seismic landslides. The ENVINet5_MF method is advantageous for co-seismic landslide detection because it features a landslide gain index (LGI) that effectively eliminates the spectral interference of bare land and roads. We conducted two experiments using multi-temporal PlanetScope images acquired in Hokkaido, Japan, and Mainling, China. The accuracy evaluation and rationality analysis show that ENVINet5_MF performed better than comparative methods and that the co-seismic landslide areas detected by ENVINet5_MF were the most consistent with ground reference data. The findings of this study suggest that ENVINet5_MF can provide an efficient and accurate method for coseismic landslide detection to ensure a rapid response to co-seismic landslide disasters.

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来源期刊
Science China Earth Sciences
Science China Earth Sciences GEOSCIENCES, MULTIDISCIPLINARY-
CiteScore
9.60
自引率
5.30%
发文量
135
审稿时长
3-8 weeks
期刊介绍: Science China Earth Sciences, an academic journal cosponsored by the Chinese Academy of Sciences and the National Natural Science Foundation of China, and published by Science China Press, is committed to publishing high-quality, original results in both basic and applied research.
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