This paper presents a transfer domain strategy to tackle the limitations of low-resolution thermal sensors and generate higher-resolution images of reasonable quality. The proposed technique employs a CycleGAN architecture and uses a ResNet as an encoder in the generator along with an attention module and a novel loss function. The network is trained on a multi-resolution thermal image dataset acquired with three different thermal sensors. Results report better performance benchmarking results on the 2nd CVPR-PBVS-2021 thermal image super-resolution challenge than state-of-the-art methods. The code of this work is available online.
CITATION STYLE
Rivadeneira, R. E., Sappa, A. D., Vintimilla, B. X., & Hammoud, R. (2022). A Novel Domain Transfer-Based Approach for Unsupervised Thermal Image Super-Resolution. Sensors, 22(6). https://doi.org/10.3390/s22062254
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