山崩
鉴定(生物学)
预警系统
样品(材料)
学习迁移
财产(哲学)
地质学
曲面(拓扑)
计算机科学
岩土工程
采矿工程
法律工程学
人工智能
工程类
几何学
电信
数学
生物
认识论
植物
哲学
色谱法
化学
出处
期刊:Cornell University - arXiv
日期:2021-08-08
被引量:1
摘要
Geohazards such as landslides have caused great losses to the safety of people's lives and property, which is often accompanied with surface cracks. If such surface cracks could be identified in time, it is of great significance for the monitoring and early warning of geohazards. Currently, the most common method for crack identification is manual detection, which is with low efficiency and accuracy. In this paper, a deep transfer learning framework is proposed to effectively and efficiently identify slope surface cracks for the sake of fast monitoring and early warning of geohazards such as landslides. The essential idea is to employ transfer learning by training (a) the large sample dataset of concrete cracks and (b) the small sample dataset of soil and rock masses cracks. In the proposed framework, (1) pretrained cracks identification models are constructed based on the large sample dataset of concrete cracks; (2) refined cracks identification models are further constructed based on the small sample dataset of soil and rock masses cracks. The proposed framework could be applied to conduct UAV surveys on high-steep slopes to realize the monitoring and early warning of landslides to ensure the safety of people's lives and property.
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