Abstract

Topographic phase simulation is important for deformation estimation in differential synthetic aperture radar (SAR) interferometry (DInSAR). The most commonly used 30-m resolution SRTM digital elevation model (DEM) is usually required to be resampled due to its relatively low resolution (LR) comparing to the high resolution (HR) SAR images. Although the WorldDEM<sup>TM</sup> with a 12-m resolution achieves global coverage, it is not available freely. Consequently, it is useful to evaluate the practicability of the super-resolution (SR) from LR SRTM DEMs to HR WorldDEM<sup>TM</sup> ones, which has not been investigated. Most existing DEM SR models are trained with synthetic datasets in which the LR DEMs are downsampled from their HR counterparts. However, these models become less effective when applied to real-world scenarios due to the domain gap between the synthetic and real LR DEMs. In this paper, we constructed a real-world DEM SR dataset where the LR and HR DEMs were collected from SRTM and WorldDEM<sup>TM</sup>, respectively. An ESRGAN model was adapted to train on the dataset. Considering that the real LR-HR pairs may suffer from misalignment, we introduced the perceptual loss for better optimizing the model. Moreover, a logarithmic normalization was proposed to compress the wide elevation range and adjust the uneven distribution. We also pretrained the model using natural images since collecting sufficient HR DEMs is costly. Experiments demonstrate that the proposed method achieves near 0.69dB improvement of peak signal-to-noise ratio (PSNR). In addition, our method is also validated to improve the topographic phase simulation by 23.42% of MSE.

Highlights

  • DIGITAL elevation model (DEM) is used, incorporating the precise knowledge of the satellite orbits, to estimate and compensate the topographic phase in differential synthetic aperture radar (SAR) interferometry (DInSAR) for deformation detection [1-6]

  • We compared the enhanced super-resolution generative adversarial network (ESRGAN) model pretrained with natural image to the same model trained from scratch using the SWtrian set only

  • We proposed a Deep learning (DL) based SR method to reconstruct shuttle radar topography mission (SRTM) DEMs for improving topographic phase simulation in the InSAR field

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Summary

Introduction

DIGITAL elevation model (DEM) is used, incorporating the precise knowledge of the satellite orbits, to estimate and compensate the topographic phase in differential synthetic aperture radar (SAR) interferometry (DInSAR) for deformation detection [1-6]. With the launch of new SAR satellites, the resolution of the SAR images has dramatically increased to meter level. The globally available DEMs often provide much lower resolution, such as the most used products of shuttle radar topography mission (SRTM) with a resolution of 30 m. Some DEM data are available with higher resolution, like WorldDEMTM, these DEMs are often quite expensive. As a result, upsampled low-resolution (LR) DEMs are generally exploited to match the high-resolution (HR) SAR data, limiting the performance of DInSAR. It is necessary to develop a learning-based DEM super-resolution (SR) method to generate HR DEMs of better quality from LR ones

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