In deep learning research, self-supervised learning (SSL) has received great attention triggering interest within both the computer vision and remote sensing communities. While there has been a big success in computer vision, most of the potential of SSL in the domain of earth observation remains locked. In this paper, we provide an introduction to, and a review of the concepts and latest developments in SSL for computer vision in the context of remote sensing. Further, we provide a preliminary benchmark of modern SSL algorithms on popular remote sensing datasets, verifying the potential of SSL in remote sensing and providing an extended study on data augmentations. Finally, we identify a list of promising directions of future research in SSL for earth observation (SSL4EO) to pave the way for fruitful interaction of both domains.
翻译:在深层次的学习研究中,自我监督的学习引起了计算机视觉和遥感界的极大关注,虽然在计算机视觉方面取得了巨大成功,但是在地球观测领域,SSL的大部分潜力仍然被锁定。在本文件中,我们介绍并审查了SSL在遥感方面计算机视觉的概念和最新发展情况。此外,我们提供了现代SSL算法在大众遥感数据集方面的初步基准,核实SSL在遥感方面的潜力,并就数据扩增问题进行扩展研究。最后,我们确定了SLSL未来地球观测研究的有希望的方向清单,以便为两个领域富有成效的互动铺平道路。