This paper studies the detection of anomalous crop development at the parcel-level based on an unsupervised outlier detection technique. The experimental validation is conducted on rapeseed and wheat parcels located in Beauce (France). The proposed methodology consists of four sequential steps: 1) preprocessing of synthetic aperture radar (SAR) and multispectral images acquired using Sentinel-1 and Sentinel-2 satellites, 2) extraction of SAR and multispectral pixel-level features, 3) computation of parcel-level features using zonal statistics and 4) outlier detection. The different types of anomalies that can affect the studied crops are analyzed and described. The different factors that can influence the outlier detection results are investigated with a particular attention devoted to the synergy between Sentinel-1 and Sentinel-2 data. Overall, the best performance is obtained when using jointly a selection of Sentinel-1 and Sentinel-2 features with the isolation forest algorithm. The selected features are VV and VH backscattering coefficients for Sentinel-1 and 5 Vegetation Indexes for Sentinel-2 (among us, the Normalized Difference Vegetation Index and two variants of the Normalized Difference Water). When using these features with an outlier ratio of 10%, the percentage of detected true positives (i.e., crop anomalies) is equal to 94.1% for rapeseed parcels and 95.5% for wheat parcels.
翻译:本文根据不受监督的外部探测技术,对位于博尔采(法国)的强奸种子和小麦包裹进行了实验性鉴定。提议的方法包括四个连续步骤:1)预先处理合成孔径雷达(SAR)和使用哨兵-1和哨兵-2卫星获得的多光谱图像,2)提取合成孔径雷达和多光谱象素-2的特征,3)利用区域统计数据计算包裹级特征,3)利用区域统计数据计算包裹级特征,4)外部检测。分析和描述可能影响研究过的作物的不同类型异常现象。对影响外部检测结果的不同因素进行调查,特别注意Sentinel-1和哨兵-2数据之间的协同作用。总体而言,在联合选择Sentinel-1和哨兵-2的特征时取得最佳性能,同时采用隔离森林算法。选定的特征是Sentinel-1和多光谱象素-2的VVV和VH背影系数和Sentinel-2的5种植被指数(与我们一起,正常变异变的Vget Vigelation Veation Veget exational indal indal ex), 当用这些正常比例的土壤特征时, 10-ligetational ex exexexexexexexexexexpetrapeal exislational lades lades