Valle Benoît, Simonneau Thierry, Boulord Romain, Sourd Francis, Frisson Thibault, Ryckewaert Maxime, Hamard Philippe, Brichet Nicolas, Dauzat Myriam, Christophe Angélique
UMR759 Laboratoire d'Ecophysiologie des Plantes sous Stress Environnementaux (LEPSE), INRA, Montpellier SupAgro, 2 Place Pierre Viala, 34060 Montpellier Cedex 2, France.
Sun'R SAS, 7 rue de Clichy, 75009 Paris, France.
Plant Methods. 2017 Nov 8;13:98. doi: 10.1186/s13007-017-0248-5. eCollection 2017.
Plant science uses increasing amounts of phenotypic data to unravel the complex interactions between biological systems and their variable environments. Originally, phenotyping approaches were limited by manual, often destructive operations, causing large errors. Plant imaging emerged as a viable alternative allowing non-invasive and automated data acquisition. Several procedures based on image analysis were developed to monitor leaf growth as a major phenotyping target. However, in most proposals, a time-consuming parameterization of the analysis pipeline is required to handle variable conditions between images, particularly in the field due to unstable light and interferences with soil surface or weeds. To cope with these difficulties, we developed a low-cost, 2D imaging method, hereafter called PYM. The method is based on plant leaf ability to absorb blue light while reflecting infrared wavelengths. PYM consists of a Raspberry Pi computer equipped with an infrared camera and a blue filter and is associated with scripts that compute projected leaf area. This new method was tested on diverse species placed in contrasting conditions. Application to field conditions was evaluated on lettuces grown under photovoltaic panels. The objective was to look for possible acclimation of leaf expansion under photovoltaic panels to optimise the use of solar radiation per unit soil area.
The new PYM device proved to be efficient and accurate for screening leaf area of various species in wide ranges of environments. In the most challenging conditions that we tested, error on plant leaf area was reduced to 5% using PYM compared to 100% when using a recently published method. A high-throughput phenotyping cart, holding 6 chained PYM devices, was designed to capture up to 2000 pictures of field-grown lettuce plants in less than 2 h. Automated analysis of image stacks of individual plants over their growth cycles revealed unexpected differences in leaf expansion rate between lettuces rows depending on their position below or between the photovoltaic panels.
The imaging device described here has several benefits, such as affordability, low cost, reliability and flexibility for online analysis and storage. It should be easily appropriated and customized to meet the needs of various users.
植物科学使用越来越多的表型数据来揭示生物系统与其多变环境之间的复杂相互作用。最初,表型分析方法受到人工操作的限制,且往往具有破坏性,会导致较大误差。植物成像技术应运而生,成为一种可行的替代方法,可实现非侵入性和自动化的数据采集。人们开发了几种基于图像分析的程序来监测叶片生长这一主要表型分析目标。然而,在大多数方案中,需要对分析流程进行耗时的参数化设置,以处理图像之间的可变条件,尤其是在田间,由于光照不稳定以及与土壤表面或杂草的干扰。为应对这些困难,我们开发了一种低成本的二维成像方法,以下简称PYM。该方法基于植物叶片吸收蓝光同时反射红外波长的能力。PYM由一台配备红外相机和蓝色滤光片的树莓派计算机组成,并与计算投影叶面积的脚本相关联。这种新方法在置于不同条件下的多种物种上进行了测试。在光伏板下种植的生菜上评估了其在田间条件下的应用。目的是寻找光伏板下叶片扩展的可能适应性,以优化单位土壤面积的太阳辐射利用。
新的PYM设备在广泛的环境中对各种物种的叶面积筛选证明是高效且准确的。在我们测试的最具挑战性的条件下,使用PYM时植物叶面积的误差降至5%,而使用最近发表的方法时误差为100%。设计了一个高通量表型分析推车,可容纳6个链式PYM设备,能够在不到2小时内拍摄多达2000张田间种植的生菜植株的照片。对单个植株在其生长周期内的图像堆栈进行自动分析发现,生菜行之间的叶片扩展速率存在意想不到的差异,这取决于它们在光伏板下方或之间的位置。
这里描述的成像设备具有多种优点,如价格实惠、成本低、可靠性高以及在线分析和存储的灵活性。它应该很容易被采用和定制,以满足不同用户的需求。