Automated classification of Persistent Scatterers Interferometry time series

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Abstract

We present a new method for the automatic classification of Persistent Scatters Interferometry (PSI) time series based on a conditional sequence of statistical tests. Time series are classified into distinctive predefined target trends, such as uncorrelated, linear, quadratic, bilinear and discontinuous, that describe different styles of ground deformation. Our automatic analysis overcomes limits related to the visual classification of PSI time series, which cannot be carried out systematically for large datasets. The method has been tested with reference to landslides using PSI datasets covering the northern Apennines of Italy. The clear distinction between the relative frequency of uncorrelated, linear and non-linear time series with respect to mean velocity distribution suggests that different target t. © 2005 Author(s).

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Berti, M., Corsini, A., Franceschini, S., & Iannacone, J. P. (2013). Automated classification of Persistent Scatterers Interferometry time series. Natural Hazards and Earth System Sciences, 13(8), 1945–1958. https://doi.org/10.5194/nhess-13-1945-2013

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