A region-growing technique to improve multi-temporal DInSAR interferogram phase unwrapping performance

2013 ◽  
Vol 4 (10) ◽  
pp. 988-997 ◽  
Author(s):  
Y. Yang ◽  
A. Pepe ◽  
M. Manzo ◽  
F. Casu ◽  
R. Lanari
GEOMATICA ◽  
2020 ◽  
Author(s):  
Benjamin Brunson ◽  
Baoxin Hu ◽  
Jianguo Wang

Phase Unwrapping for Synthetic Aperture RADAR Interferometry (InSAR) remains a challenge due to the speckle noise and temporal decorrelation present in many interferograms. This paper proposes a Polynomial-Based Region-Growing Phase Unwrapping (PBRGPU) approach that builds from the Region-Growing Phase Unwrapping (RGPU) approach developed by Xu and Cumming in 1996 (Xu and Cumming, 1996). This approach iteratively performs phase unwrapping at the edges of multiple seeded regions using a least-squares polynomial phase prediction, and conducts statistically rigorous quality assurance to identify low quality pixels from further processing. The approach uses a desired statistical confidence interval as its main parameter, which is more intuitive to users than other threshold parameters. The proposed approach is currently the only phase unwrapping approach to take this strategy with its quality assurance. The proposed approach improved upon the solution quality of the RGPU approach, in some cases achieving a tenfold decrease in RMSE for simulated data. Applying the proposed approach to RADARSAT-2 data collected over Polar Bear Provincial Park in Northern Ontario, Canada yielded positive results, and the PBRGPU approach consistently performed on par with or outperformed SNAPHU in terms of solution quality. The PBRGPU approach does lag behind SNAPHU in terms of the domain of the solution, with SNAPHU unwrapping a significantly larger portion of the interferogram in all test cases, but this issue could be mitigated through post-processing the unwrapped interferogram. The proposed approach provides a solid foundation for adaptive region-growing algorithms that integrate all available information rather than relying on pre-processing strategies.


2021 ◽  
Author(s):  
Ashutosh Tiwari ◽  
Avadh BIhari Narayan ◽  
Onkar Dikshit

<p>Multi-temporal interferometric synthetic aperture radar (MT-InSAR) technique has been effectively used to monitor deformation events over the last two decades. The processing steps generally involve pixel selection, phase unwrapping and displacement estimation. The pixel selection step takes most of the processing time, while a reliable method for phase unwrapping is still not available. This study demonstrates the effect of using deep learning (DL) architectures for MT-InSAR processing. The architectures are applied to reduce time computations and further to improve the quality of pixel selection. Some promising results for pixel selection have been shown earlier with the proposed architecture. In this study, we investigate the performance of the proposed architectures on newer datasets with larger temporal interval. To achieve this objective, the models are retrained with interferometric stacks covering larger temporal period and large time steps (for better estimation of interferometric phase components). Pixel selection results are compared with those obtained using open access algorithms used for MT-InSAR processing.</p>


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