EGU2020-5783
https://doi.org/10.5194/egusphere-egu2020-5783
EGU General Assembly 2020
© Author(s) 2020. This work is distributed under
the Creative Commons Attribution 4.0 License.

Methodology for rockfall activity identification and Machine Learning classification based on Point Clouds monitoring in Montserrat Massif (Spain)

Laura Blanco1,2,6, David Garcia-Sellé1,3, Nicolas Pascual4, Anna Puig4, Maria Salamó4, Marta Guinau1,3, Òscar Gratacós1,6, Josep Anton Muñoz1,6, Marc Janeras5, and Oriol Pedraza5
Laura Blanco et al.
  • 1GEOMODELS Research Institute, University of Barcelona, Spain
  • 2Anufra, Soil & Water Consulting, Spain
  • 3University of Barcelona, RISKNAT Research Group, Facultat de Ciències de la Terra, Spain
  • 4University of Barcelona, Facultat de Matemàtiques i Informàtica, Spain,
  • 5Institut Cartogràfic i Geològic de Catalunya, Barcelona, Spain
  • 6University of Barcelona, GGAC Research Group, Facultat de Ciències de la Terra, Spain

In recent years, different techniques and devices (LIDAR, photogrammetry, UAVs or hyperspectral sensors….) have been used to acquire large amounts of data for the study of the earth’s surface offering high temporal, spatial and spectral resolutions. However, a problem lies on the availability of an efficient methodology to extract the desired information with geological signification from these large datasets. Minimal intervention of the experienced users and automatic or semi-automatic data processing are mandatory to avoid dilatory processes and to obtain productive results.

Our aim is to develop a new methodology for the identification and classification of changes in the surface of cliffs from consecutive point clouds. The new algorithms implemented recognize the different orientations of the point cloud and then, compare each point respect to a previous one in the normal direction isolating clusters of displaced points. Thereafter, these clusters of points are classified according to geometrical and raw data parameters in a) rockfalls, b) small movements of the rock surface and c) non-interest clusters of vegetation or noise like edge effects. The methodology is focused on creating more geometrical features which serve as criteria to identify and classify the differences between two point clouds. Actually, the number of clusters remains slightly high for manual processing. In this regard, the aim is to minimize the interaction of the user and take advantage of the large volume of data generated from high temporal resolution associated with the monitoring. The high number of events collected along years of monitoring allows the use of Machine Learning techniques to improve the classification of clusters automatically.

Montserrat Massif (Catalonia, Spain) is a singular case study of rockfall risk to apply the developed methodology due to the high presence of visitors, whose security conflicts with natural heritage preservation. For a correct design of infrastructures protection measures, a rockfall monitoring plan is under development including Terrestrial Laser Scanner from 2007.

How to cite: Blanco, L., Garcia-Sellé, D., Pascual, N., Puig, A., Salamó, M., Guinau, M., Gratacós, Ò., Muñoz, J. A., Janeras, M., and Pedraza, O.: Methodology for rockfall activity identification and Machine Learning classification based on Point Clouds monitoring in Montserrat Massif (Spain) , EGU General Assembly 2020, Online, 4–8 May 2020, EGU2020-5783, https://doi.org/10.5194/egusphere-egu2020-5783, 2020