MrSARP: A Hierarchical Deep Generative Prior for SAR Image
Super-resolution
- URL: http://arxiv.org/abs/2212.00069v1
- Date: Wed, 30 Nov 2022 19:12:21 GMT
- Title: MrSARP: A Hierarchical Deep Generative Prior for SAR Image
Super-resolution
- Authors: Tushar Agarwal, Nithin Sugavanam, and Emre Ertin
- Abstract summary: We present a novel hierarchical deep-generative model MrSARP for SAR imagery.
MrSARP is trained in conjunction with a critic that scores multi resolution images jointly to decide if they are realistic images of a target at different resolutions.
We show how this deep generative model can be used to retrieve the high spatial resolution image from low resolution images of the same target.
- Score: 0.5161531917413706
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Generative models learned from training using deep learning methods can be
used as priors in inverse under-determined inverse problems, including imaging
from sparse set of measurements. In this paper, we present a novel hierarchical
deep-generative model MrSARP for SAR imagery that can synthesize SAR images of
a target at different resolutions jointly. MrSARP is trained in conjunction
with a critic that scores multi resolution images jointly to decide if they are
realistic images of a target at different resolutions. We show how this deep
generative model can be used to retrieve the high spatial resolution image from
low resolution images of the same target. The cost function of the generator is
modified to improve its capability to retrieve the input parameters for a given
set of resolution images. We evaluate the model's performance using the three
standard error metrics used for evaluating super-resolution performance on
simulated data and compare it to upsampling and sparsity based image sharpening
approaches.
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