The application of deep learning algorithms to Earth observation (EO) in recent years has enabled substantial progress in fields that rely on remotely sensed data. However, given the data scale in EO, creating large datasets with pixel-level annotations by experts is expensive and highly time-consuming. In this context, priors are seen as an attractive way to alleviate the burden of manual labeling when training deep learning methods for EO. For some applications, those priors are readily available. Motivated by the great success of contrastive-learning methods for self-supervised feature representation learning in many computer-vision tasks, this study proposes an online deep clustering method using crop label proportions as priors to learn a sample-level classifier based on government crop-proportion data for a whole agricultural region. We evaluate the method using two large datasets from two different agricultural regions in Brazil. Extensive experiments demonstrate that the method is robust to different data types (synthetic-aperture radar and optical images), reporting higher accuracy values considering the major crop types in the target regions. Thus, it can alleviate the burden of large-scale image annotation in EO applications.
翻译:近年来对地球观测应用深层次学习算法使依靠遥感数据的领域取得了长足进展,然而,鉴于EO的数据规模,创建大型数据集,加上专家的像素级说明费用昂贵且耗时甚多,在这方面,在培训EO深层次学习方法时,先行算法被视为减轻人工标签负担的有吸引力的方法。对于一些应用而言,这些先行是现成的。受许多计算机任务中自我监督特征表现学习的对比学习方法的巨大成功推动,本研究提出一种在线深层次集群方法,利用作物标签比例作为以前学习基于整个农业区域政府作物比例数据的样本级分类器。我们用巴西两个不同农业区域的两个大数据集评估这一方法。广泛的实验表明,这种方法对不同数据类型(合成孔径雷达和光学图像)十分可靠,报告考虑到目标区域主要作物类型的更高准确值。因此,可以减轻EO应用中大规模图像说明的负担。