Ostos-Garrido Francisco J, de Castro Ana I, Torres-Sánchez Jorge, Pistón Fernando, Peña José M
Institute for Sustainable Agriculture, Spanish National Research Council (CSIC), Córdoba, Spain.
Institute of Agricultural Sciences, Spanish National Research Council (CSIC), Madrid, Spain.
Front Plant Sci. 2019 Jul 23;10:948. doi: 10.3389/fpls.2019.00948. eCollection 2019.
Bioethanol production obtained from cereal straw has aroused great interest in recent years, which has led to the development of breeding programs to improve the quality of lignocellulosic material in terms of the biomass and sugar content. This process requires the analysis of genotype-phenotype relationships, and although genotyping tools are very advanced, phenotypic tools are not usually capable of satisfying the massive evaluation that is required to identify potential characters for bioethanol production in field trials. However, unmanned aerial vehicle (UAV) platforms have demonstrated their capacity for efficient and non-destructive acquisition of crop data with an application in high-throughput phenotyping. This work shows the first evaluation of UAV-based multi-spectral images for estimating bioethanol-related variables (total biomass dry weight, sugar release, and theoretical ethanol yield) of several accessions of wheat, barley, and triticale (234 cereal plots). The full procedure involved several stages: (1) the acquisition of multi-temporal UAV images by a six-band camera along different crop phenology stages (94, 104, 119, 130, 143, 161, and 175 days after sowing), (2) the generation of ortho-mosaicked images of the full field experiment, (3) the image analysis with an object-based (OBIA) algorithm and the calculation of vegetation indices (VIs), (4) the statistical analysis of spectral data and bioethanol-related variables to predict a UAV-based ranking of cereal accessions in terms of theoretical ethanol yield. The UAV-based system captured the high variability observed in the field trials over time. Three VIs created with visible wavebands and four VIs that incorporated the near-infrared (NIR) waveband were studied, obtaining that the NIR-based VIs were the best at estimating the crop biomass, while the visible-based VIs were suitable for estimating crop sugar release. The temporal factor was very helpful in achieving better estimations. The results that were obtained from single dates [i.e., temporal scenario 1 (TS-1)] were always less accurate for estimating the sugar release than those obtained in TS-2 (i.e., averaging the values of each VI obtained during plant anthesis) and less accurate for estimating the crop biomass and theoretical ethanol yield than those obtained in TS-3 (i.e., averaging the values of each VI obtained during full crop development). The highest correlation to theoretical ethanol yield was obtained with the normalized difference vegetation index ( = 0.66), which allowed to rank the cereal accessions in terms of potential for bioethanol production.
近年来,从谷类秸秆中生产生物乙醇引起了人们极大的兴趣,这促使人们开展育种计划,以提高木质纤维素材料在生物量和糖分含量方面的质量。这个过程需要分析基因型与表型的关系,虽然基因分型工具非常先进,但表型分析工具通常无法满足在田间试验中识别生物乙醇生产潜在性状所需的大规模评估。然而,无人机(UAV)平台已证明其能够高效、无损地获取作物数据,并应用于高通量表型分析。这项工作首次评估了基于无人机的多光谱图像,用于估算小麦、大麦和小黑麦(234个谷类地块)几个品种与生物乙醇相关的变量(总生物量干重、糖分释放量和理论乙醇产量)。整个过程包括几个阶段:(1)通过六波段相机在不同作物物候期(播种后94、104、119、130、143、161和175天)获取多时期无人机图像;(2)生成全场试验的正射镶嵌图像;(3)使用基于对象的图像分析(OBIA)算法进行图像分析并计算植被指数(VIs);(4)对光谱数据和与生物乙醇相关的变量进行统计分析,以预测基于无人机的谷类品种在理论乙醇产量方面的排名。基于无人机的系统捕捉到了田间试验中随时间观察到的高变异性。研究了三个由可见光波段创建的植被指数和四个包含近红外(NIR)波段的植被指数,结果表明基于近红外的植被指数在估算作物生物量方面表现最佳,而基于可见光的植被指数适合估算作物糖分释放量。时间因素对实现更好的估算非常有帮助。从单个日期[即时间情景1(TS - 1)]获得的结果在估算糖分释放量方面总是不如在TS - 2(即平均在植物花期获得的每个植被指数的值)中获得的结果准确,在估算作物生物量和理论乙醇产量方面不如在TS - 3(即平均在作物全生育期获得的每个植被指数的值)中获得的结果准确。与理论乙醇产量的最高相关性是通过归一化差异植被指数(r = 0.66)获得的,这使得能够根据生物乙醇生产潜力对谷类品种进行排名。