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A knowledge-based machine vision system for grain quality inspection.

机译:基于知识的机器视觉系统,用于谷物质量检查。

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摘要

A knowledge-based machine vision system was developed for automatic corn quality inspection. This system consisted of a primitive feature extraction algorithm, several quality-related feature extraction algorithms, and several knowledge-based corn quality inspection algorithms. The feature extraction and corn quality inspection algorithms were developed and their performance evaluated.; The primitive feature extraction algorithm was developed using on-board hardware-based operations. The primitive features were computed in a processing time of less than one second for one object. The quality-related feature extraction algorithms were developed based on the results of the primitive feature extraction algorithm. A geometric dimension measurement algorithm was evaluated. An average color measurement algorithm was used to separate white and yellow corn varieties. The processing time was about 1.3 seconds.; The knowledge-based quality inspection algorithms were developed by training with pre-classified corn samples using knowledge acquisition algorithms. The pericarp damage inspection algorithm provided a successful classification of 95, 80, and 93% for negligible, minor, and severe damage, respectively. The processing time for the pericarp damage inspection program was about 1.0 to 2.5 seconds.; A Fourier profile-based kernel breakage inspection algorithm had an accuracy of 95% for classifying whole kernels as whole and 96% for classifying broken kernels as broken. The processing time of the breakage inspection program was about 1.5 seconds.; A morphological, curvature/symmetry, profile-based kernel breakage inspection algorithm provided a successful classification of 94 and 95% for whole and broken kernels. The processing time for the classification required about 1.5 seconds from grabbing the live image to the final classification result. The software-based neural network classifier required about 0.2 second of the 1.5 second total time.; The RGB and multispectral image-based color discrimination algorithms were also developed and evaluated by separating the color regions of vitreous endosperm, floury endosperm, germ, and red streak areas on white and on yellow corn. The color discrimination functions provided a successful off-line classification rate from 90 to 100% for the color regions of white and yellow corn kernels. The six-band multispectral images recovered more information about the variation of the spectral reflectance of corn kernels than the standard RGB images.
机译:开发了基于知识的机器视觉系统,用于自动玉米质量检查。该系统由原始特征提取算法,几种与质量相关的特征提取算法和几种基于知识的玉米质量检测算法组成。开发了特征提取和玉米质量检查算法,并对它们的性能进行了评估。使用基于机载硬件的操作开发了原始特征提取算法。对于一个对象,在不到一秒钟的处理时间内即可计算出原始特征。基于原始特征提取算法的结果,开发了与质量相关的特征提取算法。评估了几何尺寸测量算法。使用平均颜色测量算法来分离白色和黄色玉米品种。处理时间约为1.3秒。基于知识的质量检查算法是通过使用知识获取算法对预分类的玉米样品进行训练而开发的。果皮损伤检查算法分别针对可忽略不计,轻微和严重损坏提供了95%,80%和93%的成功分类。果皮损伤检查程序的处理时间约为1.0至2.5秒。基于傅里叶轮廓的内核破损检查算法对将整个内核进行整体分类的准确度为95%,对于对破损的内核进行分类的准确度为96%。破损检查程序的处理时间约为1.5秒。基于形态,曲率/对称性的基于轮廓的核破损检查算法为整个和破损的核提供了94%和95%的成功分类。从抓取实时图像到最终分类结果,分类的处理时间大约需要1.5秒。基于软件的神经网络分类器大约需要1.5秒的总时间中的0.2秒。还通过分离白色和黄色玉米上的玻璃状胚乳,粉状胚乳,胚芽和红色条纹区域的颜色区域,开发并评估了基于RGB和基于多光谱图像的颜色识别算法。颜色区分功能为白色和黄色玉米粒的颜色区域提供了成功的90%至100%的离线分类率。与标准RGB图像相比,六波段多光谱图像恢复了更多有关玉米籽粒光谱反射率变化的信息。

著录项

  • 作者

    Liao, Ke.;

  • 作者单位

    University of Illinois at Urbana-Champaign.;

  • 授予单位 University of Illinois at Urbana-Champaign.;
  • 学科 Engineering Agricultural.; Agriculture Food Science and Technology.; Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 1993
  • 页码 133 p.
  • 总页数 133
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农业工程;农产品收获、加工及贮藏;人工智能理论;
  • 关键词

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