School of Engineering, Pontificia Universidad Javeriana Bogota, Bogota, Colombia.
The International Center for Tropical Agriculture -CIAT, Palmira, Colombia.
PLoS One. 2020 Oct 5;15(10):e0239591. doi: 10.1371/journal.pone.0239591. eCollection 2020.
Traditional methods to measure spatio-temporal variations in biomass rely on a labor-intensive destructive sampling of the crop. In this paper, we present a high-throughput phenotyping approach for the estimation of Above-Ground Biomass Dynamics (AGBD) using an unmanned aerial system. Multispectral imagery was acquired and processed by using the proposed segmentation method called GFKuts, that optimally labels the plot canopy based on a Gaussian mixture model, a Montecarlo based K-means, and a guided image filtering. Accurate plot segmentation results enabled the extraction of several canopy features associated with biomass yield. Machine learning algorithms were trained to estimate the AGBD according to the growth stages of the crop and the physiological response of two rice genotypes under lowland and upland production systems. Results report AGBD estimation correlations with an average of r = 0.95 and R2 = 0.91 according to the experimental data. We compared our segmentation method against a traditional technique based on clustering. A comprehensive improvement of 13% in the biomass correlation was obtained thanks to the segmentation method proposed herein.
传统的方法来衡量时空变化的生物量依赖于劳动密集型的破坏性采样的作物。在本文中,我们提出了一种高通量表型的方法来估计地上生物量动态(AGBD)使用无人航空系统。多光谱图像被获取和处理使用提出的分割方法称为 GFKuts,最优的标签根据高斯混合模型的情节树冠,基于蒙特卡洛的 K-均值,和引导图像滤波。精确的情节分割结果使提取与生物量产量相关的几个冠层特征。机器学习算法被训练来估计 AGBD 根据作物的生长阶段和生理响应的两个水稻基因型在低地和高地生产系统。结果报告 AGBD 估计与平均 r = 0.95 和 R2 = 0.91 根据实验数据。我们比较了我们的分割方法对传统的技术基于聚类。综合提高 13%的生物量相关性是由于分割方法提出的。