Improvements in Earth observation by satellites allow for imagery of ever higher temporal and spatial resolution. Leveraging this data for agricultural monitoring is key for addressing environmental and economic challenges. Current methods for crop segmentation using temporal data either rely on annotated data or are heavily engineered to compensate the lack of supervision. In this paper, we present and compare datasets and methods for both supervised and unsupervised pixel-wise segmentation of satellite image time series (SITS). We also introduce an approach to add invariance to spectral deformations and temporal shifts to classical prototype-based methods such as K-means and Nearest Centroid Classifier (NCC). We show this simple and highly interpretable method leads to meaningful results in both the supervised and unsupervised settings and significantly improves the state of the art for unsupervised classification of agricultural time series on four recent SITS datasets.
翻译:卫星观测技术的不断改进使高时间分辨率和高空间分辨率的图像数据逐渐增多。利用这些数据实现农业监测对于应对环境和经济挑战至关重要。目前利用时间数据进行农作物分割的方法要么依赖有标注的数据,要么需要大量的工程优化来弥补缺少监督的情况。在本文中,我们提供并比较了监督和非监督像素-wise分割卫星图像时间序列的数据集和方法。我们还介绍了一种可以将光谱变形和时间漂移不变性引入到经典原型方法(如K-means和最近质心分类器(NCC))中的方法。我们表明,这种简单且高度可解释的方法可以在监督和非监督设置下产生有意义的结果,并显著改善了四个最近 SITS 数据集的无监督分类方法。