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基于神经网络方法的温室图像中穗状果穗自动分析:六种方法的比较研究。

Towards Automated Analysis of Grain Spikes in Greenhouse Images Using Neural Network Approaches: A Comparative Investigation of Six Methods.

机构信息

Plant Sciences Core Facility, CEITEC-Central European Institute of Technology, Masaryk University, 60200 Brno, Czech Republic.

Leibniz Institute of Plant Genetics and Crop Plant Research (IPK), 06466 Gatersleben, Germany.

出版信息

Sensors (Basel). 2021 Nov 9;21(22):7441. doi: 10.3390/s21227441.

Abstract

Automated analysis of small and optically variable plant organs, such as grain spikes, is highly demanded in quantitative plant science and breeding. Previous works primarily focused on the detection of prominently visible spikes emerging on the top of the grain plants growing in field conditions. However, accurate and automated analysis of all fully and partially visible spikes in greenhouse images renders a more challenging task, which was rarely addressed in the past. A particular difficulty for image analysis is represented by leaf-covered, occluded but also matured spikes of bushy crop cultivars that can hardly be differentiated from the remaining plant biomass. To address the challenge of automated analysis of arbitrary spike phenotypes in different grain crops and optical setups, here, we performed a comparative investigation of six neural network methods for pattern detection and segmentation in RGB images, including five deep and one shallow neural network. Our experimental results demonstrate that advanced deep learning methods show superior performance, achieving over 90% accuracy by detection and segmentation of spikes in wheat, barley and rye images. However, spike detection in new crop phenotypes can be performed more accurately than segmentation. Furthermore, the detection and segmentation of matured, partially visible and occluded spikes, for which phenotypes substantially deviate from the training set of regular spikes, still represent a challenge to neural network models trained on a limited set of a few hundreds of manually labeled ground truth images. Limitations and further potential improvements of the presented algorithmic frameworks for spike image analysis are discussed. Besides theoretical and experimental investigations, we provide a GUI-based tool (SpikeApp), which shows the application of pre-trained neural networks to fully automate spike detection, segmentation and phenotyping in images of greenhouse-grown plants.

摘要

自动化分析小型和光变植物器官,如谷物穗,在定量植物科学和育种中具有很高的需求。以前的工作主要集中在检测在田间条件下生长的谷物植物顶部明显可见的穗。然而,准确和自动化地分析温室图像中所有完全和部分可见的穗是一项更具挑战性的任务,这在过去很少被提及。对于图像分析来说,一个特别的困难是由叶覆盖、遮挡但也成熟的灌木作物品种的穗表示,这些穗很难与剩余的植物生物量区分开来。为了解决在不同谷物作物和光学设置下自动分析任意穗表型的挑战,在这里,我们对六种用于 RGB 图像模式检测和分割的神经网络方法进行了比较研究,包括五种深度学习方法和一种浅层神经网络。我们的实验结果表明,先进的深度学习方法表现出优越的性能,通过对小麦、大麦和黑麦图像中的穗进行检测和分割,准确率超过 90%。然而,在新的作物表型中进行穗检测的准确性可以更高。此外,对于成熟、部分可见和遮挡的穗的检测和分割,其表型与常规穗的训练集有很大差异,这仍然是对基于有限的几百个手动标记的真实图像训练的神经网络模型的挑战。讨论了用于穗图像分析的算法框架的局限性和进一步的潜在改进。除了理论和实验研究,我们还提供了一个基于 GUI 的工具(SpikeApp),该工具展示了预训练神经网络在温室种植植物的图像中自动进行穗检测、分割和表型分析的应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f98f/8621358/93d1e1acb06e/sensors-21-07441-g001.jpg

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