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Evaluation of Sentinel-1 2 time series to derive crop phenology andbiomass of wheat and rapeseed: northen France and Brittany case studies

机译:Sentinel-1和2时间序列评估小麦和油菜籽衍生作物杀虫剂的作物:Northeng France和Brittany案例研究

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Crop monitoring at a fine scale is critical from an environmental perspective since it provide crucial information to combine increased food production and sustainable management of agricultural landscapes. The recent Synthetic Aperture Radar (SAR) Sentinel-1 (S-l) and optical Sentinel-2 (S-2) time series offer a great opportunity to monitor cropland (structure, biomass and phenology) due to their high spatial and temporal resolutions. In this study, we assessed the potential of Sentinel data to derive Wet Biomass (WB), Dry biomass (DB), water content and crop Phenological Stages (PS). This study focuses on wheat and rapeseed, which represent two of the most important seasonal crops of the world in terms of occupied area. Satellites and ground datawere collected over two French temperate agricultural landscapes, in northern France and Brittany. Spectral bands and vegetation indices were derived from the S-2 images and backscattering coefficients and polarimetric indicators from the S-l images. Weused linear models to estimate the Crop Parameters (CP) of wheat and rapeseed crops. Satellite images were then classified using a random forest incremental procedure based on the importance rank of the input features to discriminate PS. Results showed that S-l features were more efficient than S-2 features to estimate CP of rapeseed while S-2 features were better for wheat. We demonstrated the high potential of S-l & 2 to predict principal PS (kappa=0.75) while secondary PS were misclassified. For wheat, the succession of PS predicted was consistent, further research is required to confirm the potential of S-l & 2.
机译:自我影响的作物监测是从环境视角批判的,因为它提供了结合增加的粮食生产和农业景观的可持续管理的重要信息。最近的合成孔径雷达(SAR)Sentinel-1(S-L)和光学哨照-2(S-2)时间序列提供了由于其高空间和时间分辨率而监测农田(结构,生物质和候选)的绝佳机会。在这项研究中,我们评估了Sentinel数据的潜力,从而衍生湿生物量(WB),干生物量(DB),水含量和作物鉴别阶段(PS)。这项研究侧重于小麦和油菜,代表了占领区的世界上最重要的季节性作物。卫星和地面数据在法国北部和布列塔尼收集了两种法国温带农业景观。光谱带和植被指数来自S-2图像和来自S-L图像的偏振系数和偏振指示器。纬纱线性模型来估算小麦和油菜作物的作物参数(CP)。然后使用基于输入特征的重要性等级来分类卫星图像以辨别PS的重要性等级。结果表明,S-L功能比S-2特征更有效,以估计油菜的CP,而S-2功能对于小麦而言。我们证明了S-L&2的高潜力预测了主要PS(Kappa = 0.75),而次要PS被错误分类。对于小麦来说,PS预测的连续是一致的,需要进一步的研究来确认S-L&2的潜力。

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