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A U-Net Approach for InSAR Phase Unwrapping and Denoising

The interferometric synthetic aperture radar (InSAR) imaging technique computes relative distances or surface maps by measuring the absolute phase differences of returned radar signals. The measured phase difference is wrapped in a 2π cycle due to the wave nature of light. Hence, the proper multiple...

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Published in:Remote sensing (Basel, Switzerland) Switzerland), 2023-10, Vol.15 (21), p.5081
Main Authors: Vijay Kumar, Sachin, Sun, Xinyao, Wang, Zheng, Goldsbury, Ryan, Cheng, Irene
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description The interferometric synthetic aperture radar (InSAR) imaging technique computes relative distances or surface maps by measuring the absolute phase differences of returned radar signals. The measured phase difference is wrapped in a 2π cycle due to the wave nature of light. Hence, the proper multiple of 2π must be added back during restoration and this process is known as phase unwrapping. The noise and discontinuity present in the wrapped signals pose challenges for error-free unwrapping procedures. Separate denoising and unwrapping algorithms lead to the introduction of additional errors from excessive filtering and changes in the statistical nature of the signal. This can be avoided by joint unwrapping and denoising procedures. In recent years, research efforts have been made using deep-learning-based frameworks, which can learn the complex relationship between the wrapped phase, coherence, and amplitude images to perform better unwrapping than traditional signal processing methods. This research falls predominantly into segmentation- and regression-based unwrapping procedures. The regression-based methods have poor performance while segmentation-based frameworks, like the conventional U-Net, rely on a wrap count estimation strategy with very poor noise immunity. In this paper, we present a two-stage phase unwrapping deep neural network framework based on U-Net, which can jointly unwrap and denoise InSAR phase images. The experimental results demonstrate that our approach outperforms related work in the presence of phase noise and discontinuities with a root mean square error (RMSE) of an order of magnitude lower than the others. Our framework exhibits better noise immunity, with a low average RMSE of 0.11.
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ispartof Remote sensing (Basel, Switzerland), 2023-10, Vol.15 (21), p.5081
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subjects Algorithms
Artificial neural networks
Artificial satellites in remote sensing
Discontinuity
Image segmentation
Imaging techniques
Interferometric synthetic aperture radar
interferometric synthetic aperture radar (InSAR)
Machine learning
Medical imaging equipment
Neighborhoods
Neural networks
Noise reduction
noise removing
Phase noise
Phase unwrapping
phase unwrapping (PU)
Radar
Radar imaging
Remote sensing
Root-mean-square errors
Segmentation
Signal processing
single baseline (SB)
single-look complex (SLC) image
Statistical analysis
Synthetic aperture radar
synthetic aperture radar (SAR)
title A U-Net Approach for InSAR Phase Unwrapping and Denoising
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