Genze Nikita, Bharti Richa, Grieb Michael, Schultheiss Sebastian J, Grimm Dominik G
Technical University of Munich, TUM Campus Straubing for Biotechnology and Sustainability, Bioinformatics, Schulgasse 22, 94315, Straubing, Germany.
Weihenstephan-Triesdorf University of Applied Sciences, Petersgasse 18, 94315, Straubing, Germany.
Plant Methods. 2020 Dec 22;16(1):157. doi: 10.1186/s13007-020-00699-x.
Assessment of seed germination is an essential task for seed researchers to measure the quality and performance of seeds. Usually, seed assessments are done manually, which is a cumbersome, time consuming and error-prone process. Classical image analyses methods are not well suited for large-scale germination experiments, because they often rely on manual adjustments of color-based thresholds. We here propose a machine learning approach using modern artificial neural networks with region proposals for accurate seed germination detection and high-throughput seed germination experiments.
We generated labeled imaging data of the germination process of more than 2400 seeds for three different crops, Zea mays (maize), Secale cereale (rye) and Pennisetum glaucum (pearl millet), with a total of more than 23,000 images. Different state-of-the-art convolutional neural network (CNN) architectures with region proposals have been trained using transfer learning to automatically identify seeds within petri dishes and to predict whether the seeds germinated or not. Our proposed models achieved a high mean average precision (mAP) on a hold-out test data set of approximately 97.9%, 94.2% and 94.3% for Zea mays, Secale cereale and Pennisetum glaucum respectively. Further, various single-value germination indices, such as Mean Germination Time and Germination Uncertainty, can be computed more accurately with the predictions of our proposed model compared to manual countings.
Our proposed machine learning-based method can help to speed up the assessment of seed germination experiments for different seed cultivars. It has lower error rates and a higher performance compared to conventional and manual methods, leading to more accurate germination indices and quality assessments of seeds.
种子萌发评估是种子研究人员衡量种子质量和性能的一项重要任务。通常,种子评估是手动进行的,这是一个繁琐、耗时且容易出错的过程。传统的图像分析方法不太适合大规模萌发实验,因为它们通常依赖于基于颜色阈值的手动调整。我们在此提出一种使用带有区域提议的现代人工神经网络的机器学习方法,用于准确的种子萌发检测和高通量种子萌发实验。
我们生成了三种不同作物(玉米、黑麦和珍珠粟)超过2400颗种子萌发过程的标记图像数据,总共超过23000张图像。使用迁移学习对具有区域提议的不同先进卷积神经网络(CNN)架构进行了训练,以自动识别培养皿中的种子并预测种子是否萌发。我们提出的模型在一个留出的测试数据集上分别对玉米、黑麦和珍珠粟实现了约97.9%、94.2%和94.3%的高平均精度(mAP)。此外,与人工计数相比,使用我们提出的模型的预测可以更准确地计算各种单值萌发指数,如平均萌发时间和萌发不确定性。
我们提出的基于机器学习的方法有助于加快对不同种子品种的种子萌发实验的评估。与传统方法和手动方法相比,它具有更低的错误率和更高的性能,从而能得出更准确的萌发指数和种子质量评估结果。