Jiang Yu, Li Changying
Horticulture Section, School of Integrative Plant Science, Cornell AgriTech, Cornell University, USA.
School of Electrical and Computer Engineering, College of Engineering, The University of Georgia, USA.
Plant Phenomics. 2020 Apr 9;2020:4152816. doi: 10.34133/2020/4152816. eCollection 2020.
Plant phenotyping has been recognized as a bottleneck for improving the efficiency of breeding programs, understanding plant-environment interactions, and managing agricultural systems. In the past five years, imaging approaches have shown great potential for high-throughput plant phenotyping, resulting in more attention paid to imaging-based plant phenotyping. With this increased amount of image data, it has become urgent to develop robust analytical tools that can extract phenotypic traits accurately and rapidly. The goal of this review is to provide a comprehensive overview of the latest studies using deep convolutional neural networks (CNNs) in plant phenotyping applications. We specifically review the use of various CNN architecture for plant stress evaluation, plant development, and postharvest quality assessment. We systematically organize the studies based on technical developments resulting from imaging classification, object detection, and image segmentation, thereby identifying state-of-the-art solutions for certain phenotyping applications. Finally, we provide several directions for future research in the use of CNN architecture for plant phenotyping purposes.
植物表型分析已被视为提高育种计划效率、理解植物与环境相互作用以及管理农业系统的瓶颈。在过去五年中,成像方法在高通量植物表型分析方面显示出巨大潜力,使得基于成像的植物表型分析受到更多关注。随着图像数据量的增加,开发能够准确快速提取表型特征的强大分析工具变得迫在眉睫。本综述的目的是全面概述在植物表型分析应用中使用深度卷积神经网络(CNN)的最新研究。我们特别回顾了各种CNN架构在植物胁迫评估、植物发育和收获后品质评估中的应用。我们根据成像分类、目标检测和图像分割带来的技术发展对研究进行系统整理,从而确定某些表型分析应用的最新解决方案。最后,我们为未来将CNN架构用于植物表型分析目的的研究提供了几个方向。