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Reflectance characteristics of bulk grains using a spectrophotometer.

机译:使用分光光度计测量大颗粒的反射特性。

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摘要

The automated cleaning, grading, and monitoring of grain throughout the grain handling system would maintain, if not improve, Canada's ability to be successful in the global grain market. A machine vision system is currently being developed for use with such systems in the Department of Biosystems Engineering, University of Manitoba. One measurement characteristic that is relatively easy to use is the reflectance characteristic of grains. Reflectance characteristics of 8 cereals, 3 oilseeds, 8 pulse seeds, and 27 specialty seeds were measured using a spectrophotometer (Model: Cary 5, Varian Canada Inc., Mississauga, ON). Using Canada Western Red Spring (CWRS) wheat samples, the effects on reflectance characteristics of growing region, moisture content, grade, and amount of foreign material were quantified. To assess the capability of reflectance features for grain classification, thirteen features were extracted from the reflectance data based on slope-ratio, ratio, and normalized area. Discriminant analysis using the hold-out method was used to determine the classification accuracies. Procedure STEPDISC was used to determine the contribution of each feature to the model. Reflectance characteristics successfully classified (100% accuracy) the oilseeds, seven of the eight classes of cereals, five of the eight classes of pulses, and twenty of the twenty-seven classes of specialty seeds. Ratio features contributed more to the classification accuracies than did the slope-ratios or the area under the reflectance curve features. Based on the intuitive selection of features, the wavelengths that best classified the bulk grain samples were 800, 1050, and 1250 nm. Classification accuracies for cereals and pulses were higher when normal estimation was used. Reflectance characteristics did not successfully classify the grading characteristics of CWRS wheat.
机译:整个谷物处理系统中谷物的自动清洁,分级和监控将保持加拿大在全球谷物市场上取得成功的能力,即使不能提高。曼尼托巴大学生物系统工程系目前正在开发一种机器视觉系统,以供此类系统使用。相对易于使用的一种测量特性是晶粒的反射率特性。使用分光光度计(型号:Cary 5,Varian Canada Inc.,密西沙加,ON)测量了8种谷物,3种油料种子,8种豆类种子和27种特种种子的反射特性。使用加拿大西部红春(CWRS)小麦样品,量化了其对生长区域,水分含量,等级和异物含量的反射特性的影响。为了评估反射特征对谷物分类的能力,基于斜率,比率和归一化面积从反射数据中提取了13个特征。使用保留方法的判别分析用于确定分类准确性。过程STEPDISC用于确定每个特征对模型的贡献。反射特性成功地将油料种子,八类谷物中的七种,八类豆类中的五种以及二十七类特殊种子中的二十种成功分类(100%准确度)。比率特征对分类精度的贡献要大于斜率比或反射率曲线特征下的面积。根据对特征的直观选择,对散装谷物样品进行最佳分类的波长是800、1050和1250 nm。当使用正常估计时,谷物和豆类的分类准确性更高。反射特性未能成功地将CWRS小麦的分级特性分类。

著录项

  • 作者

    Eu, Ming Tee.;

  • 作者单位

    University of Manitoba (Canada).;

  • 授予单位 University of Manitoba (Canada).;
  • 学科 Engineering Agricultural.
  • 学位 M.Sc.
  • 年度 1997
  • 页码 97 p.
  • 总页数 97
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农业工程;
  • 关键词

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