Okyere Frank Gyan, Cudjoe Daniel, Sadeghi-Tehran Pouria, Virlet Nicolas, Riche Andrew B, Castle March, Greche Latifa, Mohareb Fady, Simms Daniel, Mhada Manal, Hawkesford Malcolm John
Sustainable Soils and Crops, Rothamsted Research, Harpenden AL5 2JQ, UK.
School of Water, Energy and Environment, Soil, Agrifood and Biosciences, Cranfield University, Bedford MK43 0AL, UK.
Plants (Basel). 2023 May 19;12(10):2035. doi: 10.3390/plants12102035.
Image segmentation is a fundamental but critical step for achieving automated high- throughput phenotyping. While conventional segmentation methods perform well in homogenous environments, the performance decreases when used in more complex environments. This study aimed to develop a fast and robust neural-network-based segmentation tool to phenotype plants in both field and glasshouse environments in a high-throughput manner. Digital images of cowpea (from glasshouse) and wheat (from field) with different nutrient supplies across their full growth cycle were acquired. Image patches from 20 randomly selected images from the acquired dataset were transformed from their original RGB format to multiple color spaces. The pixels in the patches were annotated as foreground and background with a pixel having a feature vector of 24 color properties. A feature selection technique was applied to choose the sensitive features, which were used to train a multilayer perceptron network (MLP) and two other traditional machine learning models: support vector machines (SVMs) and random forest (RF). The performance of these models, together with two standard color-index segmentation techniques (excess green (ExG) and excess green-red (ExGR)), was compared. The proposed method outperformed the other methods in producing quality segmented images with over 98%-pixel classification accuracy. Regression models developed from the different segmentation methods to predict Soil Plant Analysis Development (SPAD) values of cowpea and wheat showed that images from the proposed MLP method produced models with high predictive power and accuracy comparably. This method will be an essential tool for the development of a data analysis pipeline for high-throughput plant phenotyping. The proposed technique is capable of learning from different environmental conditions, with a high level of robustness.
图像分割是实现自动化高通量表型分析的一个基本但关键的步骤。虽然传统的分割方法在同质环境中表现良好,但在更复杂的环境中使用时性能会下降。本研究旨在开发一种快速且强大的基于神经网络的分割工具,以高通量方式对田间和温室环境中的植物进行表型分析。获取了豇豆(来自温室)和小麦(来自田间)在整个生长周期内不同养分供应情况下的数字图像。从获取的数据集中随机选择的20张图像的图像块从其原始RGB格式转换为多种颜色空间。图像块中的像素被标注为前景和背景,每个像素具有一个包含24种颜色属性的特征向量。应用特征选择技术来选择敏感特征,这些特征用于训练多层感知器网络(MLP)以及另外两种传统机器学习模型:支持向量机(SVM)和随机森林(RF)。比较了这些模型的性能,以及两种标准颜色指数分割技术(过量绿色(ExG)和过量绿红(ExGR))的性能。所提出的方法在生成高质量分割图像方面表现优于其他方法,像素分类准确率超过98%。从不同分割方法开发的用于预测豇豆和小麦土壤植物分析发展(SPAD)值的回归模型表明,所提出的MLP方法生成的图像产生的模型具有相当高的预测能力和准确性。该方法将成为高通量植物表型分析数据分析管道开发的重要工具。所提出的技术能够从不同环境条件中学习,具有高度的鲁棒性。