The recent growth in the number of satellite images fosters the development of effective deep-learning techniques for Remote Sensing (RS). However, their full potential is untapped due to the lack of large annotated datasets. Such a problem is usually countered by fine-tuning a feature extractor that is previously trained on the ImageNet dataset. Unfortunately, the domain of natural images differs from the RS one, which hinders the final performance. In this work, we propose to learn meaningful representations from satellite imagery, leveraging its high-dimensionality spectral bands to reconstruct the visible colors. We conduct experiments on land cover classification (BigEarthNet) and West Nile Virus detection, showing that colorization is a solid pretext task for training a feature extractor. Furthermore, we qualitatively observe that guesses based on natural images and colorization rely on different parts of the input. This paves the way to an ensemble model that eventually outperforms both the above-mentioned techniques.

The color out of space: learning self-supervised representations for Earth Observation imagery / Vincenzi, Stefano; Porrello, Angelo; Buzzega, Pietro; Cipriano, Marco; Fronte, Pietro; Cuccu, Roberto; Ippoliti, Carla; Conte, Annamaria; Calderara, Simone. - (2021), pp. 3034-3041. ( 25th International Conference on Pattern Recognition, ICPR 2020 Milan, Italy 10-15 January 2021) [10.1109/ICPR48806.2021.9413112].

The color out of space: learning self-supervised representations for Earth Observation imagery

Stefano Vincenzi;Angelo Porrello;Pietro Buzzega;Marco Cipriano;Simone Calderara
2021

Abstract

The recent growth in the number of satellite images fosters the development of effective deep-learning techniques for Remote Sensing (RS). However, their full potential is untapped due to the lack of large annotated datasets. Such a problem is usually countered by fine-tuning a feature extractor that is previously trained on the ImageNet dataset. Unfortunately, the domain of natural images differs from the RS one, which hinders the final performance. In this work, we propose to learn meaningful representations from satellite imagery, leveraging its high-dimensionality spectral bands to reconstruct the visible colors. We conduct experiments on land cover classification (BigEarthNet) and West Nile Virus detection, showing that colorization is a solid pretext task for training a feature extractor. Furthermore, we qualitatively observe that guesses based on natural images and colorization rely on different parts of the input. This paves the way to an ensemble model that eventually outperforms both the above-mentioned techniques.
2021
Inglese
25th International Conference on Pattern Recognition, ICPR 2020
Milan, Italy
10-15 January 2021
Proceedings of the 25th International Conference on Pattern Recognition
3034
3041
9781728188089
Institute of Electrical and Electronics Engineers Inc.
10662 LOS VAQUEROS CIRCLE, PO BOX 3014, LOS ALAMITOS, CA 90720-1264 USA
Vincenzi, Stefano; Porrello, Angelo; Buzzega, Pietro; Cipriano, Marco; Fronte, Pietro; Cuccu, Roberto; Ippoliti, Carla; Conte, Annamaria; Calderara, S...espandi
Atti di CONVEGNO::Relazione in Atti di Convegno
273
9
The color out of space: learning self-supervised representations for Earth Observation imagery / Vincenzi, Stefano; Porrello, Angelo; Buzzega, Pietro; Cipriano, Marco; Fronte, Pietro; Cuccu, Roberto; Ippoliti, Carla; Conte, Annamaria; Calderara, Simone. - (2021), pp. 3034-3041. ( 25th International Conference on Pattern Recognition, ICPR 2020 Milan, Italy 10-15 January 2021) [10.1109/ICPR48806.2021.9413112].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1211826
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