Building change detection underpins many important applications, especially in the military and crisis management domains. Recent methods used for change detection have shifted towards deep-learning, which depends on the quality of its training data. The assembly of large-scale annotated satellite imagery datasets is therefore essential for global building change surveillance. Existing datasets almost exclusively offer near-nadir viewing angles. This limits the range of changes that can be detected. By offering larger observation ranges, the scroll imaging mode of optical satellites presents an opportunity to overcome this restriction. This paper therefore introduces S2Looking, a building change detection dataset that contains large-scale side-looking satellite images captured at various off-nadir angles. The dataset consists of 5000 bitemporal image pairs of rural areas and more than 65,920 annotated instances of changes throughout the world. The dataset can be used to train deep-learning-based change detection algorithms. It expands upon existing datasets by providing: 1) larger viewing angles; 2) large illumination variances; and 3) the added complexity of rural images. To facilitate use of the dataset, a benchmark task has been established and preliminary tests suggest deep-learning algorithms find the dataset significantly more challenging than the closest competing near-nadir dataset, LEVIR-CD+. S2Looking may therefore promote important advances in existing building change detection algorithms. The dataset is available at https://github.com/S2Looking/.
翻译:建设变化探测是许多重要应用的基础,特别是在军事和危机管理领域。最近用于变化探测的方法已经转向深层学习,这取决于其培训数据的质量。因此,大规模附加说明的卫星图像数据集的组装对于全球建筑变化监测至关重要。现有的数据集几乎完全提供了近视角度。这限制了可以检测到的变化范围。通过提供更大的观测范围,光学卫星的滚动成像模式为克服这一限制提供了一个机会。因此,本文引入了S2 looking,一个包含大型侧向型卫星图像的建筑变化探测数据集,该数据集包含在各种天体外角度采集的大型侧向型CD图像。该数据集由5,000对农村地区直观图像配对和超过65,920个附加说明的世界各地变化实例组成。该数据集可用于培养基于深层学习的改变探测算法。该数据集通过提供:(1) 更大的浏览角度;(2) 巨大的照明差异;和(3) 增加农村图像的复杂性。为了便利在建构中使用大型侧侧向型的卫星图像,一个接近基准的农村地区图像组由5000对相配对面的图像进行附加的测试,因此,一个最接近于S-LS-S-Lasset-ass