Centre for Machine Vision, Bristol Robotics Laboratory, University of the West of England, T block, Frenchay Campus, Coldharbour Lane, Bristol BS16 1QY, UK.
SynthSys & Institute of Molecular Plant Sciences, School of Biological Sciences, University of Edinburgh, The King's Buildings, Edinburgh EH9 3BF, UK.
Gigascience. 2019 May 1;8(5). doi: 10.1093/gigascience/giz056.
Tracking and predicting the growth performance of plants in different environments is critical for predicting the impact of global climate change. Automated approaches for image capture and analysis have allowed for substantial increases in the throughput of quantitative growth trait measurements compared with manual assessments. Recent work has focused on adopting computer vision and machine learning approaches to improve the accuracy of automated plant phenotyping. Here we present PS-Plant, a low-cost and portable 3D plant phenotyping platform based on an imaging technique novel to plant phenotyping called photometric stereo (PS).
We calibrated PS-Plant to track the model plant Arabidopsis thaliana throughout the day-night (diel) cycle and investigated growth architecture under a variety of conditions to illustrate the dramatic effect of the environment on plant phenotype. We developed bespoke computer vision algorithms and assessed available deep neural network architectures to automate the segmentation of rosettes and individual leaves, and extract basic and more advanced traits from PS-derived data, including the tracking of 3D plant growth and diel leaf hyponastic movement. Furthermore, we have produced the first PS training data set, which includes 221 manually annotated Arabidopsis rosettes that were used for training and data analysis (1,768 images in total). A full protocol is provided, including all software components and an additional test data set.
PS-Plant is a powerful new phenotyping tool for plant research that provides robust data at high temporal and spatial resolutions. The system is well-suited for small- and large-scale research and will help to accelerate bridging of the phenotype-to-genotype gap.
跟踪和预测不同环境下植物的生长表现对于预测全球气候变化的影响至关重要。与手动评估相比,自动图像采集和分析方法使定量生长性状测量的通量大大增加。最近的工作集中在采用计算机视觉和机器学习方法来提高自动植物表型分析的准确性。在这里,我们展示了 PS-Plant,这是一个基于植物表型新技术——光度立体(PS)的低成本、便携式 3D 植物表型平台。
我们对 PS-Plant 进行了校准,可以在昼夜(日-夜)周期内跟踪模式植物拟南芥,并在各种条件下研究生长结构,以说明环境对植物表型的巨大影响。我们开发了定制的计算机视觉算法,并评估了可用的深度神经网络架构,以实现对冠层和单个叶片的自动分割,并从 PS 衍生数据中提取基本和更高级的特征,包括 3D 植物生长和昼夜下弯运动的跟踪。此外,我们还生成了第一个 PS 训练数据集,其中包括 221 个手动注释的拟南芥冠层,用于训练和数据分析(共 1768 张图像)。提供了完整的协议,包括所有软件组件和一个附加的测试数据集。
PS-Plant 是一种用于植物研究的强大新表型分析工具,可提供高时空分辨率的稳健数据。该系统非常适合小规模和大规模研究,并将有助于加速表型与基因型之间的差距。