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Detection of Defects in Rice Seeds Using Machine Vision

机译:利用机器视觉检测水稻种子中的缺陷

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摘要

Three image-processing algorithms were developed to detect external defects of rice seeds such as germ, disease, and incompletely closed glumes. The rice seeds used for this study involved five varieties: Jinyou402, Shanyou10, Zhongyou207, Jiayou, and IIyou. Images of the samples with both black and white backgrounds were acquired with a color machine vision system. Each original image was preprocessed to create a mask for the seed region. For judging the presence of germ, 16 contour features were extracted and analyzed using principal components analysis. In addition to this, four back-propagation neural networks were created and trained with typical data sets of the four varieties. The algorithm developed for recognition of germ achieved an average accuracy of 99.4% for normal seeds and 91.9% for germinated seeds on panicle. The mean hue value and its deviation of the seed region determined with a block method were extracted as features of disease recognition. The corresponding algorithm developed for inspecting diseased seeds based on color features achieved an accuracy of 92.1% for normal seeds, 94.8% for spot-diseased seeds, and 91.1% for severely diseased seeds. Using radon transform, the group number of post-processing images proved to be a good indicator of incompletely closed glumes. The relevant algorithm was developed and achieved an accuracy of 98.6% for normal seeds, 98.6% for seeds with fine fissures, and 99.2% for seeds with unclosed glumes. The results showed that the three algorithms achieved desired accuracy
机译:开发了三种图像处理算法来检测水稻种子的外部缺陷,例如病菌,病害和不完全闭合的颖片。本研究使用的水稻种子涉及五个品种:金优402,山优10,中优207,佳优和IIyou。使用彩色机器视觉系统获取具有黑色和白色背景的样本图像。每个原始图像都经过预处理以创建种子区域的蒙版。为了判断细菌的存在,提取了16个轮廓特征并使用主成分分析进行了分析。除此之外,还创建了四个反向传播神经网络,并使用四个品种的典型数据集对其进行了训练。开发的用于细菌识别的算法对圆锥花序正常种子的平均准确性为99.4%,对发芽种子的平均准确性为91.9%。提取的平均色度值及其种子区域的偏差确定使用块法确定的疾病特征。根据颜色特征开发的用于检查患病种子的相应算法,正常种子的准确性达到92.1%,斑点病种子的准确性达到94.8%,重病种子的准确性达到91.1%。使用radon变换,后处理图像的组数证明是不完全闭合的颖片的良好指示。开发了相关算法,普通种子的精度为98.6%,细裂缝的种子的精度为98.6%,无闭合颖片的种子的精度为99.2%。结果表明,三种算法均达到了预期的精度。

著录项

  • 来源
    《Transactions of the ASABE》 |2006年第6期|p.1929-1934|共6页
  • 作者

    F. Cheng; Y. B. Ying; Y. B. Li;

  • 作者单位

    Fang Cheng, Professor, and Yibin Ying, ASABE Member Engineer, Professor, College of Biosystems Engineering and Food Science, Zhejiang University;

    Hangzhou, China;

    and Yanbin Li, ASABE Member Engineer, Professor, Department of Biological and Agricultural Engineering, University of Arkansas, Fayetteville, Arkansas, and Visiting Professor, College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou, China. Corresponding author: Yibin Ying, College of Biosystems Engineering and Food Science, Zhejiang University, 268 Kaixuan Road, Hangzhou 310029, China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Defect detection; Image processing; Machine vision; Rice seed;

    机译:缺陷检测;图像处理;机器视觉水稻种子;

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