End-to-End Intelligent Framework for Rockfall Detection
Thanasis Zoumpekas, Anna Puig, Maria Salam\'o, David, Garc\'ia-Sell\'es, Laura Blanco Nu\~nez, Marta Guinau

TL;DR
This paper presents an intelligent machine learning framework for automatic rockfall detection using point cloud data, addressing the limitations of manual identification and visual inspection in geological risk assessment.
Contribution
It introduces a novel multi-algorithm machine learning system with resampling and feature selection techniques for rockfall event detection from multi-temporal point cloud data.
Findings
Machine learning pipelines can accurately detect rockfalls in complex geological settings.
Resampling techniques improve detection performance on imbalanced datasets.
Benchmarking different models identifies effective approaches for rockfall detection.
Abstract
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 or digital cameras. Multi-temporal 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 expertise 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 poses significant research challenges and justifies intensive experimental analysis. In…
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Taxonomy
TopicsLandslides and related hazards · Remote Sensing and LiDAR Applications · 3D Surveying and Cultural Heritage
MethodsFeature Selection
