Do we still need ImageNet pre-training in remote sensing scene classification?
Due to the scarcity of labeled data, using supervised models pre-trained on ImageNet is a de facto standard in remote sensing scene classification. Recently, the availability of larger high resolution remote sensing (HRRS) image datasets and progress in self-supervised learning have brought up the q...
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Zusammenfassung: | Due to the scarcity of labeled data, using supervised models pre-trained on
ImageNet is a de facto standard in remote sensing scene classification.
Recently, the availability of larger high resolution remote sensing (HRRS)
image datasets and progress in self-supervised learning have brought up the
questions of whether supervised ImageNet pre-training is still necessary for
remote sensing scene classification and would supervised pre-training on HRRS
image datasets or self-supervised pre-training on ImageNet achieve better
results on target remote sensing scene classification tasks. To answer these
questions, in this paper we both train models from scratch and fine-tune
supervised and self-supervised ImageNet models on several HRRS image datasets.
We also evaluate the transferability of learned representations to HRRS scene
classification tasks and show that self-supervised pre-training outperforms the
supervised one, while the performance of HRRS pre-training is similar to
self-supervised pre-training or slightly lower. Finally, we propose using an
ImageNet pre-trained model combined with a second round of pre-training using
in-domain HRRS images, i.e. domain-adaptive pre-training. The experimental
results show that domain-adaptive pre-training results in models that achieve
state-of-the-art results on HRRS scene classification benchmarks. The source
code and pre-trained models are available at
\url{https://github.com/risojevicv/RSSC-transfer}. |
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DOI: | 10.48550/arxiv.2111.03690 |