QMRNet: Quality Metric Regression for EO Image Quality Assessment and Super-Resolution
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Published:2023-05-06
Issue:9
Volume:15
Page:2451
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ISSN:2072-4292
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Container-title:Remote Sensing
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language:en
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Short-container-title:Remote Sensing
Author:
Berga David1ORCID, Gallés Pau2, Takáts Katalin2, Mohedano Eva2, Riordan-Chen Laura2, Garcia-Moll Clara2, Vilaseca David2, Marín Javier2
Affiliation:
1. Eurecat, Centre Tecnològic de Catalunya, Tecnologies Multimèdia, 08005 Barcelona, Spain 2. Satellogic Inc., Davidson, NC 28036, USA
Abstract
The latest advances in super-resolution have been tested with general-purpose images such as faces, landscapes and objects, but mainly unused for the task of super-resolving earth observation images. In this research paper, we benchmark state-of-the-art SR algorithms for distinct EO datasets using both full-reference and no-reference image quality assessment metrics. We also propose a novel Quality Metric Regression Network (QMRNet) that is able to predict the quality (as a no-reference metric) by training on any property of the image (e.g., its resolution, its distortions, etc.) and also able to optimize SR algorithms for a specific metric objective. This work is part of the implementation of the framework IQUAFLOW, which has been developed for the evaluation of image quality and the detection and classification of objects as well as image compression in EO use cases. We integrated our experimentation and tested our QMRNet algorithm on predicting features such as blur, sharpness, snr, rer and ground sampling distance and obtained validation medRs below 1.0 (out of N = 50) and recall rates above 95%. The overall benchmark shows promising results for LIIF, CAR and MSRN and also the potential use of QMRNet as a loss for optimizing SR predictions. Due to its simplicity, QMRNet could also be used for other use cases and image domains, as its architecture and data processing is fully scalable.
Funder
Ministry of Science and Innovation European Union within the framework of FEDER RETOS-Collaboration of the State Program of Research
Subject
General Earth and Planetary Sciences
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