论文标题
自学,遥感和抽象:跨300万个位置的代表性学习
Self-Supervision, Remote Sensing and Abstraction: Representation Learning Across 3 Million Locations
论文作者
论文摘要
基于自学的深度学习分类方法在学术文献中受到了很大的关注。但是,此类方法在遥感图像域上的性能仍然不足。在这项工作中,我们探讨了基于图像的城市分类任务的对比表示学习方法,这是城市计算中的重要问题。我们在两个领域,300万个地点和1500多个城市中使用卫星和图像图像。我们表明,自我监督的方法可以从几乎200个城市中建立可推广的表示形式,并且在未见城市中,具有最小的额外培训的代表性达到了95 \%的准确性。我们还发现,与监督方法相比,这种方法的性能差异是由自然图像和抽象图像之间的域差异引起的,对于遥感图像至关重要。我们将所有分析与学术文献的现有监督模型进行比较,并开源我们的模型,以进行更广泛的使用和进一步的批评。
Self-supervision based deep learning classification approaches have received considerable attention in academic literature. However, the performance of such methods on remote sensing imagery domains remains under-explored. In this work, we explore contrastive representation learning methods on the task of imagery-based city classification, an important problem in urban computing. We use satellite and map imagery across 2 domains, 3 million locations and more than 1500 cities. We show that self-supervised methods can build a generalizable representation from as few as 200 cities, with representations achieving over 95\% accuracy in unseen cities with minimal additional training. We also find that the performance discrepancy of such methods, when compared to supervised methods, induced by the domain discrepancy between natural imagery and abstract imagery is significant for remote sensing imagery. We compare all analysis against existing supervised models from academic literature and open-source our models for broader usage and further criticism.