Abstract

BackgroundAssessment 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.ResultsWe 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.ConclusionOur 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.

Highlights

  • Assessment of seed germination is an essential task for seed researchers to measure the quality and performance of seeds

  • We used the mean average precision (mAP) as a performance metric, which is calculated based on the whole test set for different cultivars

  • Germination detection and prediction First, we evaluated the seed detection and germination classification abilities for three different species using Faster Regions with CNN features (R-CNN) and transfer learning with four different pre-trained convolutional neural network architectures (ResNet50, ResNet101, Inception v2 and InceptionResNet v2)

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Summary

Introduction

Assessment of seed germination is an essential task for seed researchers to measure the quality and performance of seeds. 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. Assessment of seed germination is an essential task for seed. In order to reduce the number of manual steps in seed testing, which is highly error-prone, many researchers have proposed methods to automate this process. GERMINATOR is a software that measures the area and the difference in position between points in time of images as an indicator for germination in Arabidopsis thaliana [10]. For different seeds, several parameters require modifications and the system is most likely to fail with changes in illumination or partial occlusion of the seeds

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