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使用卷积神经网络对小麦穗进行检测与分析。

Detection and analysis of wheat spikes using Convolutional Neural Networks.

作者信息

Hasan Md Mehedi, Chopin Joshua P, Laga Hamid, Miklavcic Stanley J

机构信息

1Phenomics and Bioinformatics Research Centre, University of South Australia, Mawson Lakes, Adelaide, 5095 Australia.

2School of Engineering and Information Technology, Murdoch University, Perth, Western Australia 6150 Australia.

出版信息

Plant Methods. 2018 Nov 15;14:100. doi: 10.1186/s13007-018-0366-8. eCollection 2018.

Abstract

BACKGROUND

Field phenotyping by remote sensing has received increased interest in recent years with the possibility of achieving high-throughput analysis of crop fields. Along with the various technological developments, the application of machine learning methods for image analysis has enhanced the potential for quantitative assessment of a multitude of crop traits. For wheat breeding purposes, assessing the production of wheat spikes, as the grain-bearing organ, is a useful proxy measure of grain production. Thus, being able to detect and characterize spikes from images of wheat fields is an essential component in a wheat breeding pipeline for the selection of high yielding varieties.

RESULTS

We have applied a deep learning approach to accurately detect, count and analyze wheat spikes for yield estimation. We have tested the approach on a set of images of wheat field trial comprising 10 varieties subjected to three fertilizer treatments. The images have been captured over one season, using high definition RGB cameras mounted on a land-based imaging platform, and viewing the wheat plots from an oblique angle. A subset of in-field images has been accurately labeled by manually annotating all the spike regions. This annotated dataset, called SPIKE, is then used to train four region-based Convolutional Neural Networks (R-CNN) which take, as input, images of wheat plots, and accurately detect and count spike regions in each plot. The CNNs also output the spike density and a classification probability for each plot. Using the same R-CNN architecture, four different models were generated based on four different datasets of training and testing images captured at various growth stages. Despite the challenging field imaging conditions, e.g., variable illumination conditions, high spike occlusion, and complex background, the four R-CNN models achieve an average detection accuracy ranging from 88 to across different sets of test images. The most robust R-CNN model, which achieved the highest accuracy, is then selected to study the variation in spike production over 10 wheat varieties and three treatments. The SPIKE dataset and the trained CNN are the main contributions of this paper.

CONCLUSION

With the availability of good training datasets such us the SPIKE dataset proposed in this article, deep learning techniques can achieve high accuracy in detecting and counting spikes from complex wheat field images. The proposed robust R-CNN model, which has been trained on spike images captured during different growth stages, is optimized for application to a wider variety of field scenarios. It accurately quantifies the differences in yield produced by the 10 varieties we have studied, and their respective responses to fertilizer treatment. We have also observed that the other R-CNN models exhibit more specialized performances. The data set and the R-CNN model, which we make publicly available, have the potential to greatly benefit plant breeders by facilitating the high throughput selection of high yielding varieties.

摘要

背景

近年来,随着实现对农田进行高通量分析的可能性,通过遥感进行田间表型分析受到了越来越多的关注。随着各种技术的发展,用于图像分析的机器学习方法的应用增强了对多种作物性状进行定量评估的潜力。对于小麦育种而言,评估作为籽粒承载器官的麦穗产量,是衡量籽粒产量的一个有用的替代指标。因此,能够从小麦田图像中检测并表征麦穗,是小麦育种流程中选择高产品种的一个重要组成部分。

结果

我们应用了一种深度学习方法来准确检测、计数和分析麦穗以进行产量估计。我们在一组包含10个品种且经过三种肥料处理的小麦田间试验图像上测试了该方法。这些图像是在一个季节内,使用安装在陆基成像平台上的高清RGB相机,从倾斜角度拍摄小麦地块获得的。通过手动标注所有麦穗区域,对一部分田间图像进行了精确标注。这个标注数据集称为SPIKE,然后用于训练四个基于区域的卷积神经网络(R-CNN),这些网络将小麦地块图像作为输入,并准确检测和计数每个地块中的麦穗区域。这些卷积神经网络还输出每个地块的穗密度和分类概率。使用相同的R-CNN架构,基于在不同生长阶段捕获的四个不同训练和测试图像数据集生成了四个不同的模型。尽管田间成像条件具有挑战性,例如光照条件变化、穗遮挡严重和背景复杂,但这四个R-CNN模型在不同的测试图像集上实现了88%到[此处原文缺失具体数值]的平均检测准确率。然后选择最稳健且准确率最高的R-CNN模型来研究10个小麦品种和三种处理下穗产量的变化。SPIKE数据集和经过训练的卷积神经网络是本文的主要贡献。

结论

有了像本文提出的SPIKE数据集这样的良好训练数据集,深度学习技术能够在从复杂的小麦田图像中检测和计数麦穗方面实现高精度。所提出的稳健R-CNN模型是在不同生长阶段捕获的麦穗图像上进行训练的,针对更广泛的田间场景应用进行了优化。它准确地量化了我们研究的10个品种所产生的产量差异,以及它们对肥料处理的各自响应。我们还观察到其他R-CNN模型表现出更具针对性的性能。我们公开提供的数据集和R-CNN模型,有可能通过促进高产品种的高通量选择,极大地造福植物育种者。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ad46/6236889/b1031d4491cf/13007_2018_366_Fig1_HTML.jpg

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