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基于卷积神经网络的水稻粒数自动估算。

Automatic estimation of rice grain number based on a convolutional neural network.

出版信息

J Opt Soc Am A Opt Image Sci Vis. 2022 Jun 1;39(6):1034-1044. doi: 10.1364/JOSAA.459580.

DOI:10.1364/JOSAA.459580
PMID:36215533
Abstract

The grain number on the rice panicle, which directly determines the rice yield, is a very important agronomic trait in rice breeding and yield-related research. However, manual counting of grain number per rice panicle is time-consuming, error-prone, and laborious. In this study, a novel prototype, dubbed the "GN-System," was developed for the automatic calculation of grain number per rice panicle based on a deep convolutional neural network. First, a whole panicle grain detection (WPGD) model was established using the Cascade R-CNN method embedded with the feature pyramid network for grain recognition and location. Then, a GN-System integrated with the WPGD model was developed to automatically calculate grain number per rice panicle. The performance of the GN-System was evaluated through estimated stability and accuracy. One hundred twenty-four panicle samples were tested to evaluate the estimated stability of the GN-System. The results showed that the coefficient of determination () was 0.810, the mean absolute percentage error was 8.44%, and the root mean square error was 16.73. Also, another 12 panicle samples were tested to further evaluate the estimated accuracy of the GN-System. The results revealed that the mean accuracy of the GN-System reached 90.6%. The GN-System, which can quickly and accurately predict the grain number per rice panicle, can provide an effective, convenient, and low-cost tool for yield evaluation, crop breeding, and genetic research. It also has great potential in assisting phenotypic research.

摘要

水稻穗上的粒数直接决定了水稻的产量,是水稻育种和产量相关研究中非常重要的农艺性状。然而,手动计数水稻穗上的粒数既费时、易错又费力。在本研究中,开发了一种名为“GN-System”的新型原型,该系统基于深度卷积神经网络,用于自动计算水稻穗上的粒数。首先,使用嵌入式特征金字塔网络的级联 R-CNN 方法建立了一个整穗粒检测(WPGD)模型,用于进行粒识别和定位。然后,开发了一个集成 WPGD 模型的 GN-System,用于自动计算水稻穗上的粒数。通过估计稳定性和准确性来评估 GN-System 的性能。对 124 个穗样本进行了测试,以评估 GN-System 的估计稳定性。结果表明,决定系数()为 0.810,平均绝对百分比误差为 8.44%,均方根误差为 16.73。此外,还对另外 12 个穗样本进行了测试,以进一步评估 GN-System 的估计准确性。结果表明,GN-System 的平均准确率达到了 90.6%。GN-System 可以快速准确地预测水稻穗上的粒数,为产量评估、作物育种和遗传研究提供了一种有效、方便和低成本的工具。它在辅助表型研究方面也具有很大的潜力。

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