de Castro Ana I, Rallo Pilar, Suárez María Paz, Torres-Sánchez Jorge, Casanova Laura, Jiménez-Brenes Francisco M, Morales-Sillero Ana, Jiménez María Rocío, López-Granados Francisca
Department of Crop Protection, Institute for Sustainable Agriculture (IAS), Spanish National Research Council (CSIC), Córdoba, Spain.
Departamento de Ciencias Agroforestales, ETSIA, Universidad de Sevilla, Sevilla, Spain.
Front Plant Sci. 2019 Nov 18;10:1472. doi: 10.3389/fpls.2019.01472. eCollection 2019.
The need for the olive farm modernization have encouraged the research of more efficient crop management strategies through cross-breeding programs to release new olive cultivars more suitable for mechanization and use in intensive orchards, with high quality production and resistance to biotic and abiotic stresses. The advancement of breeding programs are hampered by the lack of efficient phenotyping methods to quickly and accurately acquire crop traits such as morphological attributes (tree vigor and vegetative growth habits), which are key to identify desirable genotypes as early as possible. In this context, an UAV-based high-throughput system for olive breeding program applications was developed to extract tree traits in large-scale phenotyping studies under field conditions. The system consisted of UAV-flight configurations, in terms of flight altitude and image overlaps, and a novel, automatic, and accurate object-based image analysis (OBIA) algorithm based on point clouds, which was evaluated in two experimental trials in the framework of a table olive breeding program, with the aim to determine the earliest date for suitable quantifying of tree architectural traits. Two training systems (intensive and hedgerow) were evaluated at two very early stages of tree growth: 15 and 27 months after planting. Digital Terrain Models (DTMs) were automatically and accurately generated by the algorithm as well as every olive tree identified, independently of the training system and tree age. The architectural traits, specially tree height and crown area, were estimated with high accuracy in the second flight campaign, i.e. 27 months after planting. Differences in the quality of 3D crown reconstruction were found for the growth patterns derived from each training system. These key phenotyping traits could be used in several olive breeding programs, as well as to address some agronomical goals. In addition, this system is cost and time optimized, so that requested architectural traits could be provided in the same day as UAV flights. This high-throughput system may solve the actual bottleneck of plant phenotyping of "linking genotype and phenotype," considered a major challenge for crop research in the 21st century, and bring forward the crucial time of decision making for breeders.
橄榄农场现代化的需求促使人们通过杂交育种计划研究更高效的作物管理策略,以培育出更适合机械化操作、可用于集约化果园、具备高品质产量且能抵御生物和非生物胁迫的新橄榄品种。由于缺乏有效的表型分析方法来快速准确地获取作物性状,如形态特征(树势和营养生长习性),而这些性状是尽早识别理想基因型的关键,这阻碍了育种计划的推进。在此背景下,开发了一种基于无人机的高通量系统,用于橄榄育种计划应用,以在田间条件下的大规模表型研究中提取树木性状。该系统由无人机飞行配置(涉及飞行高度和图像重叠)以及一种基于点云的新颖、自动且准确的基于对象的图像分析(OBIA)算法组成,该算法在一个油橄榄育种计划框架内的两次试验中进行了评估,目的是确定对树木结构性状进行合适量化的最早日期。在树木生长的两个非常早期阶段(种植后15个月和27个月)对两种栽培系统(密集型和绿篱型)进行了评估。该算法自动且准确地生成了数字地形模型(DTM),并识别出了每棵橄榄树,这与栽培系统和树龄无关。在第二次飞行任务中,即种植后27个月,对树木结构性状,特别是树高和树冠面积进行了高精度估计。发现源自每种栽培系统的生长模式在三维树冠重建质量上存在差异。这些关键的表型性状可用于多个橄榄育种计划,以及实现一些农艺目标。此外,该系统在成本和时间方面进行了优化,以便在无人机飞行当天就能提供所需的结构性状。这种高通量系统可能解决植物表型分析中“连接基因型和表型”这一实际瓶颈问题,这被认为是21世纪作物研究的一项重大挑战,并为育种者提前关键的决策时间。