Estrategia para la verificación de declaraciones PAC a partir de imágenes Sentinel-2 en Navarra

IF 0.4 Q4 REMOTE SENSING
M. González-Audícana, S. López, I. Sola, J. Álvarez-Mozos
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引用次数: 0

Abstract

In June 2018, the European Commission approved a modification of the Common Agricultural Policy (CAP) that, among other measures, proposed the use of Copernicus data for the verification process of farmers’ declarations. In recent years, several research efforts have been conducted to develop operational tools to accomplish this aim, among this the Interreg-POCTEFA PyrenEOS project. This article describes the methodological strategy proposed in the PyrenEOS project, which is based on the identification of the most probable crop using the Random Forests algorithm. Originally, the strategy builds a training sample from the CAP declarations file based on their NDVI time series. In addition, a series of rules are proposed to establish the level of uncertainty in the classification, and the criteria used to represent each parcel in the verification map with a simple colour coding (traffic light), where green represents correctly declared parcels, red indicates that the declaration is dubious, and orange corresponds to parcels with a high classification uncertainty. This verification strategy has been applied to two Agricultural Regions of Navarre, during an agricultural campaign where valuable field inspections were available, with a sampling intensity of 7% of the declared parcels. The results obtained, report overall accuracies close to 80% when the most probable crop was considered, and 90% when the two most probable crops were considered. This proves it is possible to identify correctly declared parcels (green parcels) with an error below 1%. Orange and red parcels should be considered for further analysis and inspection by technicians from the paying agencies, though they represent a small percentage of declarations (~6% of parcels), and include most of the wrong declarations.
纳瓦拉Sentinel-2图像中PAC声明的验证策略
2018年6月,欧盟委员会批准了对共同农业政策(CAP)的修改,除其他措施外,建议将哥白尼数据用于农民申报的核实过程。近年来,已经进行了几项研究工作,以开发实现这一目标的操作工具,其中包括Interreg-POCTEFA PyrenEOS项目。本文描述了PyrenEOS项目中提出的方法策略,该策略基于使用随机森林算法识别最可能的作物。最初,该策略根据CAP声明文件的NDVI时间序列构建训练样本。此外,提出了一系列规则来建立分类的不确定程度,并使用简单的颜色编码(交通灯)来表示验证图中的每个包裹,其中绿色表示申报正确的包裹,红色表示申报可疑,橙色对应分类不确定度高的包裹。这一核查策略已应用于纳瓦拉的两个农业区,在一次农业活动中进行了宝贵的实地检查,抽样强度为申报包裹的7%。当考虑到最可能的作物时,所获得的结果报告的总体准确性接近80%,当考虑到两种最可能的作物时,总体准确性接近90%。这证明了在错误低于1%的情况下,正确识别申报的包裹(绿色包裹)是可能的。橙色和红色包裹应该考虑由支付机构的技术人员进一步分析和检查,尽管它们只占申报的一小部分(约占包裹的6%),并且包括大多数错误的申报。
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来源期刊
Revista de Teledeteccion
Revista de Teledeteccion REMOTE SENSING-
CiteScore
1.80
自引率
14.30%
发文量
11
审稿时长
10 weeks
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