论文标题
卫星图像的弱监督语义细分用于土地覆盖地图 - 挑战和机遇
Weakly Supervised Semantic Segmentation of Satellite Images for Land Cover Mapping -- Challenges and Opportunities
论文作者
论文摘要
全自动的大规模土地覆盖映射属于遥感社区针对的核心挑战。通常,此任务的基础是由(有监督的)机器学习模型形成的。然而,尽管卫星观测的可用性最近增长,但准确的训练数据仍然相当稀缺。另一方面,存在许多全球土地覆盖产品,并且通常可以免费获得。不幸的是,这些地图通常比现代卫星图像要低得多。此外,它们总是带有大量噪音,因为它们不能被视为地面真理,而是以前(半)自动预测任务的产物。因此,本文旨在为应用弱监督的学习策略提供理由,以最大程度地利用可用的数据源并在高分辨率的大规模土地覆盖映射中取得进展。根据SEN12MS数据集讨论了挑战和机遇,为此显示了一些基线结果。这些基线表明,专门的方法仍然存在很大的潜力,该方法旨在应对遥感的特定形式的弱监督。
Fully automatic large-scale land cover mapping belongs to the core challenges addressed by the remote sensing community. Usually, the basis of this task is formed by (supervised) machine learning models. However, in spite of recent growth in the availability of satellite observations, accurate training data remains comparably scarce. On the other hand, numerous global land cover products exist and can be accessed often free-of-charge. Unfortunately, these maps are typically of a much lower resolution than modern day satellite imagery. Besides, they always come with a significant amount of noise, as they cannot be considered ground truth, but are products of previous (semi-)automatic prediction tasks. Therefore, this paper seeks to make a case for the application of weakly supervised learning strategies to get the most out of available data sources and achieve progress in high-resolution large-scale land cover mapping. Challenges and opportunities are discussed based on the SEN12MS dataset, for which also some baseline results are shown. These baselines indicate that there is still a lot of potential for dedicated approaches designed to deal with remote sensing-specific forms of weak supervision.