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Classification of the seeds of traditional and double-low cultivars of white mustard based on texture features

机译:基于纹理特征的白芥菜种子分类

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摘要

The aim of this study was to develop classification models based on the texture features from the images acquired with a flatbed scanner to distinguish between the seeds of traditional (Radena) and double-low (Warta) cultivars of white mustard. Texture features were calculated in MaZda software. The classification models for RGB, Lab, and XYZ color space and individual color channels for distinguishing between the seeds of traditional and double-low cultivars of white mustard were built in the WEKA application with the use of selected Decision Trees (J48), Rules (J Rip), Bayes (Naive Bayes), Lazy (IBk), Meta (Multi Class Classifier), and Functions (FLDA) classifiers. The classification accuracy of the evaluated color models ranged from 77% (XYZ, IBk classifier) to 83% (RGB, JRip classifier). In an evaluation of individual color channels, classification accuracy was highest for channels R, L, and X, and it ranged from 85% for color channels L and X when the IBk classifier was used to 93% for the texture features from color channel R when the JRip classifier was used. Practical applications The developed models support fast, cheap, nondestructive, and reliable discrimination of the seeds of white mustard. The proposed classification models based on texture features effectively distinguished between the seeds of traditional (Radena) and double-low (Warta) cultivars of white mustard. Therefore, they can be reliably used to examine the authenticity of seeds and to detect seed adulteration.
机译:本研究的目的是根据具有平板扫描仪获取的图像的纹理特征来开发分类模型,以区分传统(Radena)和白色芥末的双低(Warta)品种的种子。 Mazda软件计算纹理功能。 RGB,实验室和XYZ颜色空间和各个色频频道的分类模型,用于区分在Weka应用中的传统和双低品种种子的种子,使用所选决策树(J48),规则( J RIP),贝叶斯(天真贝叶斯),懒惰(IBK),元(多级分类器)和功能(FLDA)分类器。评估颜色模型的分类精度范围为77%(XYZ,IBK分类器)至83%(RGB,JRIP分类器)。在各个颜色通道的评估中,通道R,L和X的分类精度最高,并且当IBK分类器用于来自颜色通道R的纹理特征的93%时,它的分类精度为85%。当使用JRIP分类器时。实用应用开发的模型支持快速,便宜,无损,可靠的白色芥菜种子辨别。基于质地特征的拟议分类模型有效地区分了传统(Radena)种子和白色芥末的双低(Warta)品种。因此,它们可以可靠地用于检查种子的真实性并检测种子掺杂。

著录项

  • 来源
    《Journal of food process engineering》 |2019年第5期|e13077.1-e13077.7|共7页
  • 作者单位

    Univ Warmia & Mazury Fac Engn Dept Syst Engn Heweliusza 14 PL-10718 Olsztyn Poland;

    Univ Warmia & Mazury Fac Environm Management & Agr Dept Agrotechnol Agr Prod Management & Agribusine Olsztyn Poland;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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