We introduce OpenEarthMap, a benchmark dataset, for global high-resolution land cover mapping. OpenEarthMap consists of 2.2 million segments of 5000 aerial and satellite images covering 97 regions from 44 countries across 6 continents, with manually annotated 8-class land cover labels at a 0.25--0.5m ground sampling distance. Semantic segmentation models trained on the OpenEarthMap generalize worldwide and can be used as off-the-shelf models in a variety of applications. We evaluate the performance of state-of-the-art methods for unsupervised domain adaptation and present challenging problem settings suitable for further technical development. We also investigate lightweight models using automated neural architecture search for limited computational resources and fast mapping. The dataset is available at https://open-earth-map.org.
翻译:我们引入了全球高分辨率土地覆盖测绘的基准数据集 " Open EarthMap " (Open EarthMap)。 " OpenEarthMap " (Open EarthMap)由来自六大洲44个国家的97个区域的5 000个空中和卫星图像组成,共220万个部分,覆盖了来自六大洲44个国家的97个区域,手动附加8级土地覆盖物标签,在0.25-0.5米的地面取样距离上标注了8级土地覆盖物。关于 " OpenEarthMap " (OpenEarthMap) 的静音分解模型已遍及全球范围,可用作各种应用的现成模型。我们评估了无监控域适应的最新方法的性能,并提出了适合进一步技术发展的具有挑战性的问题设置。我们还利用自动神经结构搜索有限的计算资源和快速绘图对轻型模型进行调查。数据集可在https://open-earth-map.org上查阅。