Classification of landslide type is important in risk management, yet it is often missing in large inventories. Here we present a novel data-driven method that uses morphometric and geospatial input parameters to classify landslides type at a national scale in Italy by means of a shallow Artificial Neural Network. The overall True Positive Rate is 0.76 for a five-class classification of over 275000 landslides. The performances in the entire national territory are very good, with F-score higher than 0.9 in large areas. The method can be applied to any polygonal inventory, as those produced by automatic mapping from Earth Observation imagery.

National scale classification of landslide types by a data-driven approach and artificial neural networks

Palombi Lorenzo;Raimondi Valentina
2022

Abstract

Classification of landslide type is important in risk management, yet it is often missing in large inventories. Here we present a novel data-driven method that uses morphometric and geospatial input parameters to classify landslides type at a national scale in Italy by means of a shallow Artificial Neural Network. The overall True Positive Rate is 0.76 for a five-class classification of over 275000 landslides. The performances in the entire national territory are very good, with F-score higher than 0.9 in large areas. The method can be applied to any polygonal inventory, as those produced by automatic mapping from Earth Observation imagery.
2022
Istituto di Fisica Applicata - IFAC
9781510655393
Artificial neural network
Landslide type
Machine learning
Multiclass data-driven supervised classification
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/416441
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