Fan Chenlong, Wang Wenjing, Cui Tao, Liu Ying, Qiao Mengmeng
College of Mechanical and Electronic Engineering, Nanjing Forestry University, Nanjing 210037, China.
College of Engineering, China Agricultural University, Beijing 100083, China.
Foods. 2024 Dec 15;13(24):4044. doi: 10.3390/foods13244044.
Rapid online detection of broken rate can effectively guide maize harvest with minimal damage to prevent kernel fungal damage. The broken rate prediction model based on machine vision and machine learning algorithms is proposed in this manuscript. A new dataset of high moisture content maize kernel phenotypic features was constructed by extracting seven features (geometric and shape features). Then, the regression model of the kernel (broken and unbroken) weight prediction and the classification model of kernel defect detection were established using the mainstream machine learning algorithm. In this way, the defect rapid identification and accurate weight prediction of broken kernels achieve the purpose of broken rate quantitative detection. The results prove that LGBM (light gradient boosting machine) and RF (random forest) algorithms were suitable for constructing weight prediction models of broken and unbroken kernels, respectively. The values of the models built by the two algorithms were 0.985 and 0.910, respectively. SVM (support vector machine) algorithms perform well in constructing maize kernel classification models, with more than 95% classification accuracy. A strong linear relationship was observed between the predicted and actual broken rates. Therefore, this method could help to be an accurate, objective, efficient broken rate online detection method for maize harvest.
快速在线检测破碎率可以有效地指导玉米收获,将损害降至最低,以防止玉米粒受到真菌损害。本文提出了基于机器视觉和机器学习算法的破碎率预测模型。通过提取七个特征(几何和形状特征)构建了一个新的高水分含量玉米粒表型特征数据集。然后,使用主流机器学习算法建立了玉米粒(破碎和未破碎)重量预测的回归模型以及玉米粒缺陷检测的分类模型。通过这种方式,对破碎玉米粒的缺陷快速识别和准确重量预测实现了破碎率定量检测的目的。结果证明,LGBM(轻梯度提升机)和RF(随机森林)算法分别适用于构建破碎和未破碎玉米粒的重量预测模型。这两种算法构建的模型值分别为0.985和0.910。SVM(支持向量机)算法在构建玉米粒分类模型方面表现良好,分类准确率超过95%。预测破碎率与实际破碎率之间存在很强的线性关系。因此,该方法有助于成为一种准确、客观、高效的玉米收获破碎率在线检测方法。