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Papaver rhoeas L. mapping with cokriging using UAV imagery

机译:罂粟属Rhoeas L.使用UAV Imagerery用Cokriging映射

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Accurately mapping the spatial distribution of weeds within a field is a first step towards effective Site-specific Weed Management. The main objective of this study was to investigate if the multivariate geostatistical method of cokriging (COK) can be used to improve the accuracy of Papaver rhoeas L. infestations maps in winter wheat fields using high-resolution UAV imagery as ancillary information. The primary variable was obtained by intensive grid weed density field samplings and the secondary variables were derived from the UAV imagery taken the same day as the weed field samplings (e.g. wavebands and derivative products, such as band ratios and vegetation indexes). Univariate Ordinary Kriging (OK) and multivariate cokriging (COK) interpolation methods were used and compared for Papaver density mapping. The performances of the different methods were assessed by cross-validation. The results indicated that COK outperformed OK in the spatial interpolation of Papaver density. COK reduced the prediction errors and enhanced the accuracy of Papaver estimates maps. The best performances were obtained when COK was performed with the UAV-secondary variables that yielded the highest correlation with Papaver density and produced the strongest spatial cross-semivariograms. On average, the COK with UAV-derived ancillary variables improved the accuracy of mapping Papaver density by 11 to 21% compared with OK. The results suggest the great potential of high-resolution UAV imagery as a source of ancillary information to improve the accuracy of spatial mapping of sparsely sampled target variables using COK.
机译:准确地映射杂草的空间分布,是迈向有效现场特定于杂草管理的第一步。本研究的主要目的是调查Cokriging(COK)的多变量地质统计方法,以提高汉语麦田在冬小麦田中映射的准确性,使用高分辨率UAV Imager作为辅助信息。主要变量是通过强化电网杂草密度场采样获得的,并且次要变量从与杂草场采样的同一天所采取的UAV图像导出(例如波段和衍生产品,例如带比和植被指标)。使用单变量普通Kriging(OK)和多变量录入(COK)插值方法,并比较罂粟密度映射。通过交叉验证评估不同方法的性能。结果表明,在罂粟密度的空间插值中,COK优于正常。 COK降低了预测误差并提高了罂粟花的准确性估算图。当COK与UAV二次变量进行COK时获得的最佳表现,其与罂粟密度产生最高的相关性并产生最强的空间交叉半啮合函数。平均而言,与OAV衍生的辅助变量的COK改善了与OK相比将罂粟密度的准确性提高了11%至21%。结果表明,高分辨率UAV Imagery作为辅助信息来源的巨大潜力,以提高使用COK的稀疏采样目标变量的空间映射的准确性。

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