中国农业科学 ›› 2007, Vol. 40 ›› Issue (4): 704-711 .

• 农业信息技术 • 上一篇    下一篇

基于机器视觉技术的田间籽棉品级抽样分级模型研究

王 玲,姬长英,陈兵林,刘善军,王 萍   

  1. 南京农业大学工学院
  • 收稿日期:2006-08-11 修回日期:1900-01-01 出版日期:2007-04-10 发布日期:2007-04-10
  • 通讯作者: 姬长英

Classification of Field Cotton Grade Based on Sampling Using Machine Vision

  

  1. 南京农业大学工学院
  • Received:2006-08-11 Revised:1900-01-01 Online:2007-04-10 Published:2007-04-10

摘要: 【目的】客观评价田间籽棉质量。【方法】依据中国籽棉品级分级标准,基于机器视觉技术选取棉花尺寸、色泽特征建立田间籽棉品级抽样分级模型。【结果】相关分析表明:亮度修正后,图像特征与籽棉品级之间相关显著。贝叶斯判别分析结果表明:基于10折交叉验证建立的籽棉品级判别模型的识别率在75.00%~92.86%之间,模型的平均识别率达83.20%。基于“1个标准误差”规则选取较好的贝叶斯判别模型,它在独立数据集上的泛化精度达89.11%,其中,前3级籽棉的识别率均达到100%。【结论】基于机器视觉技术识别籽棉品级是可行的,有利于提高籽棉品级抽样分级模型精度。

关键词: 田间, 籽棉, 品级, 机器视觉技术, 图像特征, 分级模型, 泛化

Abstract: In order to assess the quality of seed cottons objectively, sorting classifiers were designed based on machine vision technologies to grade 305 seed cottons with 7 grades based on their size and adjusted colors according to Chinese government grading standards. Fisher-criterion based canonical discriminants show that size and impurity contributed much more for cotton grades, and the distances among high-grades centroids were long while the ones among low-grades centroids were short. Total samples were divided into the train set and the test set. Cross-validation and Bayes-criterion based classifiers selections on the train set show that various classifiers were selected on 10-fold validation set with accuracies from 75% to 93%, and the approximate optimized classifiers were selected according to their average accuracy of 83%. Classifier performances evaluations on the test set show that the optimized classifiers can classify cottons into 7 grade categories with an accuracy of nearly 88%, and the high-grades cottons from 1 to 3 can be discriminated with an accurary of 100%. It is feasible to classify cotton grades using machine vision technologies and it helps to improve the yield of high-quality cottons.