Detecting changes on the ground in multitemporal Earth observation data is one of the key problems in remote sensing. In this paper, we introduce Sibling Regression for Optical Change detection (SiROC), an unsupervised method for change detection in optical satellite images with medium and high resolution. SiROC is a spatial context-based method that models a pixel as a linear combination of its distant neighbors. It uses this model to analyze differences in the pixel and its spatial context-based predictions in subsequent time periods for change detection. We combine this spatial context-based change detection with ensembling over mutually exclusive neighborhoods and transitioning from pixel to object-level changes with morphological operations. SiROC achieves competitive performance for change detection with medium-resolution Sentinel-2 and high-resolution Planetscope imagery on four datasets. Besides accurate predictions without the need for training, SiROC also provides a well-calibrated uncertainty of its predictions. This makes the method especially useful in conjunction with deep-learning based methods for applications such as pseudo-labeling.
翻译:检测多时地球观测数据地面的变化是遥感的主要问题之一。在本文中,我们引入了光学变化探测的SiROC(SiROC)系统,这是中分辨率和高分辨率光学卫星图像变化探测的一种不受监督的方法。SiROC是一种以空间背景为基础的方法,将像素作为远邻的线性组合模型。它使用这一模型分析像素及其在随后时间段内空间背景预测的差异,以便发现变化。我们将这种基于空间背景的变化探测与相互排斥的邻里结合,并与形态操作从像素向目标级变化过渡。SiROC在四个数据集上以中分辨率Sentinel-2和高分辨率行星望远镜图像进行变化探测方面实现了竞争性的性能。除了无需培训的准确预测外,SiROC还提供了其预测的精确度校准的不确定性。这使得这种方法特别有用,因为它与诸如伪标签等应用的深学习方法相结合。