基于RGB图像和机器视觉的玉米种子萌发早期检测

IF 6.3 Q1 AGRICULTURAL ENGINEERING
Xiaohang Liu , Zhao Zhang , Yunxia Li , C. Igathinathane , Jiangfan Yu , Zhaoyu Rui , Afshin Azizi , Xiqing Wang , Alireza Pourreza , Man Zhang
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引用次数: 0

摘要

玉米种子发芽率是反映玉米种子质量和市场销路的重要指标。目前广泛使用的种子发芽试验是人工的,效率低,耗时(需要7天),而且容易出错。本研究利用机器视觉结合萌发过程中砂粒变形和裂纹形成的特征,实现萌发的早期自动检测。收集以预设模式播种玉米种子的萌发盘的颜色(RGB)图像,对每个种子进行预处理,作为感兴趣区域(RoI)进行分析。针对每个RoI,采用不同的图像处理操作,开发了直接早萌发预测方法,即条纹带、边界和颜色。共36张图像(4个托盘,连续9天),测试三种直接方法及其不同组合。实验结果表明,条纹带+边界+颜色组合法的发芽检测平均精密度、召回率和F1值分别为73.5%、87.5%和79.2%,优于直接法。同时发现,萌发试验第4天检测的种子发芽率(92.4%)可以判断其是否满足播种要求,显著缩短了标准萌发程序时间(3 d)。本研究表明,条纹带+边界+颜色方法可作为玉米和其他作物种子发芽率自动检测的有效方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early-stage detection of maize seed germination based on RGB image and machine vision
Maize (corn) seed germination rate is an essential piece of information to reflect seed quality and its marketability. The widely used seed germination test is manual, inefficient, time-consuming (required 7 days), and error-prone. This study utilizes machine vision combined with characterization of sand deformation and crack formation during germination for early and automatic germination detection. Collected color (RGB) images of germination trays planted with maize seeds sown in preset patterns were preprocessed as regions of interest (RoI) for each seed for analysis. For each RoI, direct early germination prediction methods, namely, stripe band, boundary, and color were developed using different image processing operations. A total of 36 images (4 trays for 9 consecutive days) were used to test the three direct methods and their different combinations. Experimental results showed that the performance of stripe band + boundary + color combination was superior to each direct method, and the average precision, recall, and F1 value of germination detection were 73.5 %, 87.5 %, and 79.2 %, respectively. It was also found that the seed germination rate detected on the 4th day (92.4 %) of the germination test could determine whether it met the sowing requirements, significantly shortening (by 3 days) the standard germination procedure time. This study demonstrates that the stripe band + boundary + color method can be used as an efficient approach for automated germination rate detection of maize and other crop seeds.
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