基于机器视觉的谷糙分离机出料颗粒识别研究

Research on Identification of Grain in the Grain Separator Based on Machine Vision

  • 摘要: 谷糙分离机是分离稻谷和糙米的重要机器,其分料装置的精准控制是提高谷糙分离效率的决定因素之一。拟采用一种稻谷和糙米检测装置,检测谷糙分离机出料端颗粒的种类。以稻谷和糙米颗粒为研究对象,首先采集稻谷和糙米图片,提取稻谷和糙米的颜色特征、形态特征和纹理特征。构建单特征模型和不同特征组合模型,利用支持向量机(SVM)、K近邻(KNN)、贝叶斯(Bayes)和随机森林(Random Forest)4个分类器进行训练和测试。试验结果表明,基于纹理+形态+颜色的特征组合的SVM分类器与其它特征组合相比识别率最高,识别准确率达到97.8%。该方法可应用于检测装置中,为分料装置的精确性控制提供理论依据。

     

    Abstract: The grain separator is an important machine for separating paddy and brown rice, the precise control of the separating device is one of the decisive factors to improve the separation efficiency. A paddy and brown rice detection device is proposed to detect the types of particles at the discharge end of the grain separator. Focuses on the study of paddy and brown rice, Firstly, pictures of paddy and brown rice were collected to extract color, shape and texture features of paddy and brown rice. The single feature model and different feature combination model were constructed, and four classifiers, namely support vector machine (SVM), K-nearest neighbor (KNN), Bayes and Random Forest, were used for training and recognition. The experimental results show that compared with other feature combinations, the SVM classifier based on texture + shape + color has the highest recognition rate, and the recognition accuracy reaches 97.8%. The method can be applied to the testing device, and provides a theoretical basis for the precise control of the material separation device.

     

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