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In-line sorting of irregular potatoes by using automated computer-based machine vision system

机译:使用基于计算机的自动化机器视觉系统在线分类不规则马铃薯

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摘要

This study was conducted to develop a fast and accurate computer-based machine vision system for detecting irregular potatoes in real-time. Supported algorithms were specifically developed and programmed for image acquisition and processing, controlling the whole process, saving the classification results and monitoring the progress of all operations. A database of images was first formulated from potatoes with different shapes and sizes, and then some essential geometrical features such as perimeter, centroid, area, moment of inertia, length and width were extracted from each image. Also, eight shape parameters originated from size features and Fourier transform were calculated for each image in the database. All extracted shape parameters were entered in a stepwise linear discriminant analysis to extract the most important parameters that most characterized the regularity of potatoes. Based on step-wise linear discriminant analysis, two shape features (roundness and extent) and four Fourier-shape descriptors were found to be effective in sorting regular and irregular potatoes. The average correct classification was 96.5% for a training set composed of 228 potatoes and then the algorithm was validated in another testing set composed of 182 potatoes in a real-time operation. The experiments showed that the success of in-line classification of moving potatoes was 96.2%. Concurrently, the well-shaped potatoes were classified by size achieving a 100% accuracy indicating that the developed machine vision system has a great potential in automatic detection and sorting of misshapen products.
机译:进行这项研究是为了开发一种快速,准确的基于计算机的机器视觉系统,用于实时检测不规则马铃薯。支持的算法经过专门开发和编程,可用于图像采集和处理,控制整个过程,保存分类结果并监视所有操作的进度。首先从具有不同形状和大小的马铃薯中建立图像数据库,然后从每个图像中提取一些基本的几何特征,例如周长,质心,面积,惯性矩,长度和宽度。同样,为数据库中的每个图像计算了八个源自尺寸特征和傅立叶变换的形状参数。将所有提取的形状参数输入到逐步线性判别分析中,以提取最能表征土豆规律性的最重要参数。基于逐步线性判别分析,发现两个形状特征(圆度和程度)和四个傅里叶形状描述符可有效地对规则和不规则马铃薯进行分类。对于由228个土豆组成的训练集,平均正确分类率为96.5%,然后在另一个由182个土豆组成的测试集中对算法进行了实时验证。实验表明,对马铃薯进行在线分类的成功率为96.2%。同时,对形状良好的马铃薯进行分类,以达到100%的精度,这表明开发的机器视觉系统在自动检测和分类畸形产品方面具有很大的潜力。

著录项

  • 来源
    《Journal of food engineering》 |2012年第2期|p.60-68|共9页
  • 作者单位

    Agricultural Engineering Department, Faculty of Agriculture, Suez Canal University, Ismailia, Egypt;

    Instituto Valenciano de Investigaciones Agrarias (IVIA), Ctra. Moncada-Naquera km 5, 46113 Moncada (Valencia), Spain;

    Instituto Valenciano de Investigaciones Agrarias (IVIA), Ctra. Moncada-Naquera km 5, 46113 Moncada (Valencia), Spain;

    Instituto Valenciano de Investigaciones Agrarias (IVIA), Ctra. Moncada-Naquera km 5, 46113 Moncada (Valencia), Spain;

  • 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

    machine vision; computer vision; potato; fourier transform; shape; classification; image processing;

    机译:机器视觉计算机视觉;土豆;傅里叶变换;形状;分类;图像处理;

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