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Multiclass classification of dry beans using computer vision and machine learning techniques

机译:使用计算机视觉和机器学习技术的干豆的多款分类

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摘要

There is a wide range of genetic diversity of dry bean which is the most produced one among the edible legume crops in the world. Seed quality is definitely influential in crop production. Therefore, seed classification is essential for both marketing and production to provide the principles of sustainable agricultural systems. The primary objective of this study is to provide a method for obtaining uniform seed varieties from crop production, which is in the form of population, so the seeds are not certified as a sole variety. Thus, a computer vision system was developed to distinguish seven different registered varieties of dry beans with similar features in order to obtain uniform seed classification. For the classification model, images of 13,611 grains of 7 different registered dry beans were taken with a high-resolution camera. A user-friendly interface was designed using the MATLAB graphical user interface (GUI). Bean images obtained by computer vision system (CVS) were subjected to segmentation and feature extraction stages, and a total of 16 features; 12 dimension and 4 shape forms, were obtained from the grains. Multilayer perceptron (MLP), Support Vector Machine (SVM), k-Nearest Neighbors (kNN), Decision Tree (DT) classification models were created with 10-fold cross validation and performance metrics were compared. Overall correct classification rates have been determined as 91.73%, 93.13%, 87.92% and 92.52% for MLP, SVM, kNN and DT, respectively. The SVM classification model, which has the highest accuracy results, has classified the Barbunya, Bombay, Cali, Dermason, Horoz, Seker and Sira bean varieties with 92.36%, 100.00%, 95.03%, 94.36%, 94.92%, 94.67% and 86.84%, respectively. With these results, the demands of the producers and the customers are largely met about obtaining uniform bean varieties.
机译:干酪有很多遗传多样性,这是世界上可食用的豆科作物中最多的一种。种子质量在作物生产中绝对有影响力。因此,种子分类对于营销和生产方面至关重要,以提供可持续农业系统的原则。本研究的主要目的是提供一种从农作物生产中获得均匀种子品种的方法,这是群体的形式,因此种子未被证明为唯一的品种。因此,开发了一种计算机视觉系统,以区分具有类似特征的七种不同注册的干豆,以获得均匀的种子分类。对于分类模型,采用高分辨率相机采用13,611粒谷物的7种不同的注册干酪。使用MATLAB图形用户界面(GUI)设计了一个用户友好的界面。通过计算机视觉系统(CVS)获得的豆图像进行分段和特征提取阶段,共16个特征;从晶粒获得12个尺寸和4形状。多层的Perceptron(MLP),支持向量机(SVM),K-最近邻居(KNN),决策树(DT)分类模型采用了10倍的交叉验证和性能指标。整体正确的分类率分别确定为MLP,SVM,KNN和DT的91.73%,93.13%,87.92%和92.52%。具有最高精度结果的SVM分类模型,分类为Barbunya,Bombay,Cali,Dermason,Horoz,Seker和Sira Bean品种,92.36%,100.00%,95.03%,94.36%,94.92%,94.67%和86.84 %, 分别。通过这些结果,生产者和客户的需求基本满足了获得均匀豆品种。

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