Abstract

Synthetic aperture radar (SAR) missions with short repeat times enable opportunities for near real-time deformation monitoring. Traditional multitemporal interferometric SAR (MT-InSAR) is able to monitor long-term and periodic deformation with high precision by time-series analysis. However, as time series lengthen, it is time-consuming to update the current results by reprocessing the whole dataset. Additionally, the number of coherent scatterers varies over time due to disappearing and emerging scatterers due to inevitable changes in surface scattering, and potential deformation anomalies require changes in the prevailing deformation model. Here, we propose a novel method to analyze InSAR time series recursively and detect both significant changes in scattering as well as deformation anomalies based on the new acquisitions. Sequential change detection is developed to identify temporary coherent scatterers (TCSs) using amplitude time series. Based on the predicted phase residuals, scatterers with abnormal deformation displacements are identified by a generalized ratio test, while the parameters of stable scatterers are updated using Kalman filtering. The quality of the anomaly detection is assessed based on the detectability power and the minimum detectable deformation. This facilitates (near) real-time data processing and decreases the false alarm likelihood. Experimental results show that the technique can be used for the real-time evaluation of deformation risks.

Highlights

  • M ULTITEMPORAL interferometric synthetic aperture radar (MT-InSAR) is a powerful tool for measuring deformation of the earth with millimeter-levelManuscript received February 10, 2021; revised May 24, 2021 and June 18, 2021; accepted June 24, 2021

  • A novel method for deformation anomaly detection is proposed based on an amplitude-augmented recursive InSAR approach

  • A χ2-test is used to test the stability per arc-over time, and the initial parameters and VC matrix are updated with new phase observations using a static Kalman filter

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Summary

INTRODUCTION

M ULTITEMPORAL interferometric synthetic aperture radar (MT-InSAR) is a powerful tool for measuring deformation of (objects on) the earth with millimeter-level. A recursive process converts the InSAR method to a near real-time monitoring technique with high precision and updates the prevailing deformation model with new observations efficiently. In order to find deformation anomalies within the deformation time series, a post-processing method is proposed in [29], where multiple hypothesis tests are applied to find an optimal kinematic model from a library of canonical functions. This way, both temporal phase unwrapping errors as well as optimal models are detected automatically for all scatterers.

Amplitude Analysis
Interferometric Phase Analysis
Initialization
RECURSIVE INSAR AND ANOMALY DETECTION
Sequential Relative Calibration
Sequential Change Detection
Ratio Test for Internal Reliability
Deformation Anomaly Detection
Kalman Filter
Quality Metrics of Anomaly Detection
Deformation Anomaly Detection on Simulated Data
Practical Considerations
Deformation Anomaly Detection in TerraSAR-X Data
Comparison Between One and Three Updates
Findings
CONCLUSION
Full Text
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