基于机器视觉的商品马铃薯质量与薯型分级方法
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1.华中农业大学工学院,武汉 430070;2.农业农村部长江中下游农业装备重点实验室,武汉 430070

作者简介:

万鹏,E-mail:wanpeng09@mail.hzau.edu.cn

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中图分类号:

TP391.4

基金项目:

湖北省重点研发计划项目(2023BBB062);湖北省乡村振兴科技支撑项目(2022BBA150)


A machine vision-based method for grading quality and type of commercial potatoes
Author:
Affiliation:

1.College of Engineering, Huazhong Agricultural University, Wuhan 430070,China;2.Key Laboratory of Agricultural Equipment for the Middle and Lower Reaches of the Yangtze River, Ministry of Agriculture and Rural Affairs, Wuhan 430070,China

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    摘要:

    针对商品马铃薯混杂销售导致其商品价值降低,且人工分选费时费力,分级效率低下等问题,提出一种基于机器视觉的商品马铃薯质量与薯型分级方法。搭建了马铃薯图像采集装置采集马铃薯视频,从中等间隔截取马铃薯图像,对采集的马铃薯图像进行图像校正,再采用图像处理方法获取马铃薯二值化图像。根据马铃薯质量特征,对马铃薯二值化图像进行边缘检测,提取马铃薯轮廓坐标点并构建马铃薯三维模型,使用线性回归分析方法构建商品马铃薯体积预测模型,根据密度公式得到质量预测模型,实现商品马铃薯的质量分级。根据薯型特征,提取图像中马铃薯区域的最小外接矩形的长、宽、长宽比、马铃薯区域的面积、周长、圆形度、偏心率和凸度8个物理参数,并对其使用KMO检验与Bartlett检验判断主成分分析法的适用性,采用主成分分析法对物理参数矩阵进行降维,结合逻辑回归分析法,建立薯型分级预测模型,对商品马铃薯畸形分类检测;对大中小各40个的马铃薯样本进行质量分级试验,随机抽取50个的马铃薯样本进行薯型分级试验;体积预测模型分级正确率分别为95%、100%、95%;薯型分级预测模型分级正确率分别为92%和100%。研究表明,提出的机器视觉的商品马铃薯分级方法可用于商品马铃薯的质量与薯型的在线分级检测。

    Abstract:

    A machine vision-based method for grading the quality and type of commercial potatoes was proposed to solve the problems of lowering the commodity value of commercial potatoes due to their mixed sales, time-consuming and laborious manual sorting, and low efficiency of grading. A potato image acquisition device was built to collect videos of potato, intercepting images of potato at equal intervals. The images of potato collected were corrected, and then image processing methods were used to obtain binarized images of potato. Edge detection was conducted on the binarized image of potato based on the quality characteristics of potato. Potato contour coordinate points were extracted and a three-dimensional model of potato was constructed. The volume prediction model of commercial potatoes was constructed with linear regression analysis, and the quality prediction model was obtained according to the density formula to grade the quality of commercial potatoes. Eight physical parameters including the length, width, aspect ratio, area, perimeter, roundness, eccentricity and convexity of the smallest outer rectangle of the potato area in the image were extracted based on the characteristics of potato type. The applicability of the principal component analysis(PCA) was judged with the KMO test and the Bartlett's test. PCA was used to downsize the matrix of the physical parameters. A prediction model for grading the type of potato was established by combining with the logistic regression analysis method to grade and detect deformities in commercial potatoes. An experiment of grading quality was conducted on 40 samples of potato with different sizes. 50 samples of potato were randomly selected for grading the type of commercial potato. The results showed that the accuracy of grading with the volume prediction model was 95%, 100%, and 95%, respectively. The accuracy of grading the type of commercial potato with prediction model for grading the type of commercial potato was 92% and 100%, respectively. It is indicated that the machine vision-based method for grading commercial potato proposed can be used for online detection of grading the quality and type of commercial potatoes.

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万鹏,熊成新,郭畅,喻亮,吴晓龙.基于机器视觉的商品马铃薯质量与薯型分级方法[J].华中农业大学学报,2025,44(6):323-333

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  • 收稿日期:2025-07-22
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  • 在线发布日期: 2025-12-16
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