IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2022)

Blind Source Separation for MT-InSAR Analysis With Structural Health Monitoring Applications

  • Gabriel Martin,
  • Andrew Hooper,
  • Tim J. Wright,
  • Sivasakthy Selvakumaran

DOI
https://doi.org/10.1109/JSTARS.2022.3190027
Journal volume & issue
Vol. 15
pp. 7605 – 7618

Abstract

Read online

Monitoring large areas of the Earth's surface is possible thanks to the availability of remote sensing data obtained by a large collection of diverse satellites orbiting the Earth. Specifically, multitemporal interferometric synthetic aperture radar (MT-InSAR) techniques supply the structural community with time series of line-of-sight displacements of terrain or structures, such as bridges or buildings, resulting from causes such as thermal expansion, contraction, and terrain deformation. The analysis of the different deformation signals observed is crucial in order to identify the different phenomena that cause the deformation. In this article, we explore the possibility of applying blind source separation algorithms to MT-InSAR, with the aim of developing methods towards automatic identification of different deformation patterns both in buildings and structures. We validate the proposed methodology using both synthetically generated datasets and real MT-InSAR data. We also provide a comparison with other similar methods. Our results demonstrate that InSAR time-series analysis can benefit from the use of the proposed blind source separation approach. Furthermore, the proposed technique is robust to the noise which is usually present in MT-InSAR data. This opens the door for monitoring infrastructure at scale over very large areas, helping to monitor civil infrastructures, and providing relevant insights to asset owners regarding the performance of such structures over time.

Keywords