Probabilistic Estimation of InSAR Displacement Phase Guided by Contextual Information and Artificial Intelligence

Journal Article (2022)
Author(s)

Philip Conroy (TU Delft - Mathematical Geodesy and Positioning)

Simon .A.N. van Diepen (TU Delft - Mathematical Geodesy and Positioning)

Sanneke Van Asselen (Deltares)

Gilles Erkens (Deltares, Universiteit Utrecht)

FJ Van Leijen (TU Delft - Mathematical Geodesy and Positioning)

R. Hanssen (TU Delft - Mathematical Geodesy and Positioning)

Research Group
Mathematical Geodesy and Positioning
Copyright
© 2022 Philip Conroy, S.A.N. van Diepen, Sanneke Van Asselen, Gilles Erkens, F.J. van Leijen, R.F. Hanssen
DOI related publication
https://doi.org/10.1109/TGRS.2022.3203872
More Info
expand_more
Publication Year
2022
Language
English
Copyright
© 2022 Philip Conroy, S.A.N. van Diepen, Sanneke Van Asselen, Gilles Erkens, F.J. van Leijen, R.F. Hanssen
Research Group
Mathematical Geodesy and Positioning
Volume number
60
Pages (from-to)
1-11
Reuse Rights

Other than for strictly personal use, it is not permitted to download, forward or distribute the text or part of it, without the consent of the author(s) and/or copyright holder(s), unless the work is under an open content license such as Creative Commons.

Abstract

Phase unwrapping, also known as ambiguity resolution, is an underdetermined problem in which assumptions must be made to obtain a result in SAR interferometry (InSAR) time series analysis. This problem is particularly acute for distributed scatterer InSAR, in which noise levels can be so large that they are comparable in magnitude to the signal of investigation. In addition, deformation rates can be highly nonlinear and orders of magnitude larger than neighboring point scatterers, which may be part of a more stable object. The combination of these factors has often proven too challenging for the conventional InSAR processing methods to successfully monitor these regions. We present a methodology which allows for additional environmental information to be integrated into the phase unwrapping procedure, thereby alleviating the problems described above. We show how problematic epochs that cause errors in the temporal phase unwrapping process can be anticipated by the machine learning algorithms which can create categorical predictions about the relative ambiguity level based on the readily available meteorological data. These predictions significantly assist in the interpretation of large changes in the wrapped interferometric phase and enable the monitoring of environments not previously possible using standard minimum gradient phase unwrapping techniques.