4.7 Article

An intelligent framework for end-to-end rockfall detection

期刊

INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS
卷 36, 期 11, 页码 6471-6502

出版社

WILEY-HINDAWI
DOI: 10.1002/int.22557

关键词

geology; imbalanced classification; intelligent systems; machine learning; rockfall monitoring

资金

  1. Marie Sklodowska-Curie Actions [860843]
  2. Marie Curie Actions (MSCA) [860843] Funding Source: Marie Curie Actions (MSCA)

向作者/读者索取更多资源

A smart framework utilizing machine learning algorithms is proposed to detect rockfall events for individuals working at the intersection of geology and decision support systems. By employing a variety of state-of-the-art resampling techniques, models, and feature selection procedures, machine learning techniques were developed and experimentally validated for analyzing point cloud data in scenarios involving different geological contexts.
Rockfall detection is a crucial procedure in the field of geology, which helps to reduce the associated risks. Currently, geologists identify rockfall events almost manually utilizing point cloud and imagery data obtained from different caption devices such as Terrestrial Laser Scanner (TLS) or digital cameras. Multitemporal comparison of the point clouds obtained with these techniques requires a tedious visual inspection to identify rockfall events which implies inaccuracies that depend on several factors such as human expertize and the sensibility of the sensors. This paper addresses this issue and provides an intelligent framework for rockfall event detection for any individual working in the intersection of the geology domain and decision support systems. The development of such an analysis framework presents major research challenges and justifies exhaustive experimental analysis. In particular, we propose an intelligent system that utilizes multiple machine learning algorithms to detect rockfall clusters of point cloud data. Due to the extremely imbalanced nature of the problem, a plethora of state-of-the-art resampling techniques accompanied by multiple models and feature selection procedures are being investigated. Various machine learning pipeline combinations have been examined and benchmarked applying well-known metrics to be incorporated into our system. Specifically, we developed machine learning techniques and applied them to analyze point cloud data extracted from TLS in two distinct case studies, involving different geological contexts: the basaltic cliff of Castellfollit de la Roca and the conglomerate Montserrat Massif, both located in Spain. Our experimental results indicate that some of the above-mentioned machine learning pipelines can be utilized to detect rockfall incidents on mountain walls, with experimentally validated accuracy.

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