Fisher’s tobacco leaf grading method based on image multi-features

Shubin Yang, Chunlin Dong, Feng-ge Wang, Mi Zhou, Mengze Yuan, Jiben Huang
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引用次数: 0

Abstract

To address the problems of manual tobacco grading, which is influenced by subjective factors and low accuracy of discrimination, this article discusses the automatic discrimination grading method based on machine vision technology. Firstly, a total of 16 image features were extracted from the geometric, color and texture classes of tobacco leaf based on the pre-processing of the collected tobacco leaf images. Next, the Fisher discriminant analysis model for tobacco leaf grade recognition was established with 16 image features from 38 groups of samples, and the accuracy of the Fisher discriminant analysis model was 97.4%. Finally, the other 7 sets of features were used as prediction samples to test the applicability of the discriminant model. The results show that the grading method has higher accuracy and stability compared with manual tobacco leaf grading, and can effectively identify the grades of small samples of tobacco leaf.
基于图像多特征的Fisher烟叶分级方法
针对人工烟叶分级受主观因素影响、识别准确率低的问题,探讨了基于机器视觉技术的自动判别分级方法。首先,在对采集到的烟叶图像进行预处理的基础上,从烟叶的几何、颜色和纹理类别中提取出16个图像特征;其次,利用38组样本的16个图像特征建立烟叶等级识别的Fisher判别分析模型,Fisher判别分析模型的准确率为97.4%。最后,将另外7组特征作为预测样本,检验判别模型的适用性。结果表明,与人工烟叶分级相比,该分级方法具有更高的准确性和稳定性,能够有效识别小样本烟叶的等级。
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