Guo Xingche, Qiu Yumou, Nettleton Dan, Schnable Patrick S
Department of Statistics, Iowa State University, Ames, IA, USA.
Plant Sciences Institute, Iowa State University, Ames, IA, USA.
Plant Phenomics. 2023 May 18;5:0052. doi: 10.34133/plantphenomics.0052. eCollection 2023.
High-throughput plant phenotyping-the use of imaging and remote sensing to record plant growth dynamics-is becoming more widely used. The first step in this process is typically plant segmentation, which requires a well-labeled training dataset to enable accurate segmentation of overlapping plants. However, preparing such training data is both time and labor intensive. To solve this problem, we propose a plant image processing pipeline using a self-supervised sequential convolutional neural network method for in-field phenotyping systems. This first step uses plant pixels from greenhouse images to segment nonoverlapping in-field plants in an early growth stage and then applies the segmentation results from those early-stage images as training data for the separation of plants at later growth stages. The proposed pipeline is efficient and self-supervising in the sense that no human-labeled data are needed. We then combine this approach with functional principal components analysis to reveal the relationship between the growth dynamics of plants and genotypes. We show that the proposed pipeline can accurately separate the pixels of foreground plants and estimate their heights when foreground and background plants overlap and can thus be used to efficiently assess the impact of treatments and genotypes on plant growth in a field environment by computer vision techniques. This approach should be useful for answering important scientific questions in the area of high-throughput phenotyping.
高通量植物表型分析——利用成像和遥感技术记录植物生长动态——正得到越来越广泛的应用。这一过程的第一步通常是植物分割,这需要一个标注良好的训练数据集,以便能够准确分割重叠的植物。然而,准备这样的训练数据既耗时又费力。为了解决这个问题,我们提出了一种用于田间表型分析系统的植物图像处理流程,该流程使用自监督序列卷积神经网络方法。第一步使用温室图像中的植物像素来分割处于早期生长阶段的非重叠田间植物,然后将这些早期图像的分割结果作为训练数据,用于分离后期生长阶段的植物。所提出的流程是高效且自监督的,因为不需要人工标注的数据。然后,我们将这种方法与功能主成分分析相结合,以揭示植物生长动态与基因型之间的关系。我们表明,当前景植物和背景植物重叠时,所提出的流程能够准确分离前景植物的像素并估计其高度,因此可以通过计算机视觉技术有效地评估处理和基因型对田间环境中植物生长的影响。这种方法对于回答高通量表型分析领域的重要科学问题应该是有用的。