Convolutional Neural Network Modelling for MODIS Land Surface
Temperature Super-Resolution
- URL: http://arxiv.org/abs/2202.10753v1
- Date: Tue, 22 Feb 2022 09:12:40 GMT
- Title: Convolutional Neural Network Modelling for MODIS Land Surface
Temperature Super-Resolution
- Authors: Binh Minh Nguyen, Ganglin Tian, Minh-Triet Vo, Aur\'elie Michel,
Thomas Corpetti (CNRS, LETG), Carlos Granero-Belinchon (Lab-STICC_OSE, IMT
Atlantique - MEE)
- Abstract summary: We introduce a deep learning-based algorithm, named Multi-residual U-Net, for super-resolution of MODIS LST single-images.
Our proposed network is a modified version of U-Net architecture, which aims at super-resolving the input LST image from 1Km to 250m per pixel.
- Score: 0.5277024349608835
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Nowadays, thermal infrared satellite remote sensors enable to extract very
interesting information at large scale, in particular Land Surface Temperature
(LST). However such data are limited in spatial and/or temporal resolutions
which prevents from an analysis at fine scales. For example, MODIS satellite
provides daily acquisitions with 1Km spatial resolutions which is not
sufficient to deal with highly heterogeneous environments as agricultural
parcels. Therefore, image super-resolution is a crucial task to better exploit
MODIS LSTs. This issue is tackled in this paper. We introduce a deep
learning-based algorithm, named Multi-residual U-Net, for super-resolution of
MODIS LST single-images. Our proposed network is a modified version of U-Net
architecture, which aims at super-resolving the input LST image from 1Km to
250m per pixel. The results show that our Multi-residual U-Net outperforms
other state-of-the-art methods.
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