Liu Shouyang, Baret Fred, Allard Denis, Jin Xiuliang, Andrieu Bruno, Burger Philippe, Hemmerlé Matthieu, Comar Alexis
INRA, UMR-EMMAH, UMT-CAPTE, UAPV, 228 Route de l'aérodrome CS 40509, 84914 Avignon, France.
UMR BioSP, INRA, UAPV, 84914 Avignon, France.
Plant Methods. 2017 May 17;13:38. doi: 10.1186/s13007-017-0187-1. eCollection 2017.
Plant density and its non-uniformity drive the competition among plants as well as with weeds. They need thus to be estimated with small uncertainties accuracy. An optimal sampling method is proposed to estimate the plant density in wheat crops from plant counting and reach a given precision.
Three experiments were conducted in 2014 resulting in 14 plots across varied sowing density, cultivars and environmental conditions. The coordinates of the plants along the row were measured over RGB high resolution images taken from the ground level. Results show that the spacing between consecutive plants along the row direction are independent and follow a gamma distribution under the varied conditions experienced. A gamma count model was then derived to define the optimal sample size required to estimate plant density for a given precision. Results suggest that measuring the length of segments containing 90 plants will achieve a precision better than 10%, independently from the plant density. This approach appears more efficient than the usual method based on fixed length segments where the number of plants are counted: the optimal length for a given precision on the density estimation will depend on the actual plant density. The gamma count model parameters may also be used to quantify the heterogeneity of plant spacing along the row by exploiting the variability between replicated samples. Results show that to achieve a 10% precision on the estimates of the 2 parameters of the gamma model, 200 elementary samples corresponding to the spacing between 2 consecutive plants should be measured.
This method provides an optimal sampling strategy to estimate the plant density and quantify the plant spacing heterogeneity along the row.
种植密度及其不均匀性会引发植物之间以及与杂草之间的竞争。因此,需要以较小的不确定性准确估计它们。本文提出了一种最优采样方法,通过植株计数来估计小麦作物的种植密度,并达到给定的精度。
2014年进行了三项实验,共得到14个不同播种密度、品种和环境条件的地块。通过从地面拍摄的RGB高分辨率图像测量植株沿行方向的坐标。结果表明,在不同条件下,沿行方向相邻植株之间的间距是独立的,且服从伽马分布。然后推导了一个伽马计数模型,以确定在给定精度下估计种植密度所需的最优样本量。结果表明,测量包含90株植物的片段长度,无论种植密度如何,都能实现优于10%的精度。这种方法似乎比基于固定长度片段并统计植株数量的常用方法更有效:密度估计给定精度下的最优长度将取决于实际种植密度。伽马计数模型参数还可用于通过利用重复样本之间的变异性来量化沿行方向植株间距的异质性。结果表明,要在伽马模型的两个参数估计上达到10%的精度,应测量200个对应于连续两株植物之间间距的基本样本。
该方法提供了一种最优采样策略,用于估计种植密度并量化沿行方向的植株间距异质性。