Waldner François, Hansen Matthew C, Potapov Peter V, Löw Fabian, Newby Terence, Ferreira Stefanus, Defourny Pierre
Université catholique de Louvain, Earth and Life Institute-Environmental Sciences, 2 Croix du Sud, 1348 Louvain-la-Neuve, Belgium.
Department of Geographical Sciences, University of Maryland, 4321 Hartwick Road, College Park, Maryland, United States of America.
PLoS One. 2017 Aug 17;12(8):e0181911. doi: 10.1371/journal.pone.0181911. eCollection 2017.
The lack of sufficient ground truth data has always constrained supervised learning, thereby hindering the generation of up-to-date satellite-derived thematic maps. This is all the more true for those applications requiring frequent updates over large areas such as cropland mapping. Therefore, we present a method enabling the automated production of spatially consistent cropland maps at the national scale, based on spectral-temporal features and outdated land cover information. Following an unsupervised approach, this method extracts reliable calibration pixels based on their labels in the outdated map and their spectral signatures. To ensure spatial consistency and coherence in the map, we first propose to generate seamless input images by normalizing the time series and deriving spectral-temporal features that target salient cropland characteristics. Second, we reduce the spatial variability of the class signatures by stratifying the country and by classifying each stratum independently. Finally, we remove speckle with a weighted majority filter accounting for per-pixel classification confidence. Capitalizing on a wall-to-wall validation data set, the method was tested in South Africa using a 16-year old land cover map and multi-sensor Landsat time series. The overall accuracy of the resulting cropland map reached 92%. A spatially explicit validation revealed large variations across the country and suggests that intensive grain-growing areas were better characterized than smallholder farming systems. Informative features in the classification process vary from one stratum to another but features targeting the minimum of vegetation as well as short-wave infrared features were consistently important throughout the country. Overall, the approach showed potential for routinely delivering consistent cropland maps over large areas as required for operational crop monitoring.
缺乏足够的地面真值数据一直限制着监督学习,从而阻碍了最新的卫星衍生专题地图的生成。对于那些需要在大面积区域进行频繁更新的应用(如农田测绘)来说,情况更是如此。因此,我们提出了一种基于光谱-时间特征和过时的土地覆盖信息,在国家尺度上自动生成空间一致的农田地图的方法。该方法采用无监督方法,根据过时地图中的标签及其光谱特征提取可靠的校准像素。为确保地图的空间一致性和连贯性,我们首先建议通过对时间序列进行归一化处理并导出针对显著农田特征的光谱-时间特征,来生成无缝输入图像。其次,我们通过对国家进行分层并独立对每个层进行分类,来减少类别特征的空间变异性。最后,我们使用考虑每个像素分类置信度的加权多数滤波器去除斑点。利用一个全覆盖的验证数据集,该方法在南非使用一张16年历史的土地覆盖图和多传感器陆地卫星时间序列进行了测试。生成的农田地图的总体精度达到了92%。一次空间明确的验证揭示了全国范围内的巨大差异,并表明集约化粮食种植区的特征比小农种植系统的特征更明显。分类过程中的信息性特征在不同层之间有所不同,但针对最小植被以及短波红外特征的特征在全国范围内一直都很重要。总体而言,该方法显示出有潜力按作物监测业务的要求,在大面积区域定期提供一致的农田地图。