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Detect Black Germ in Wheat Using Machine Vision

机译:使用机器视觉检测小麦中的黑胚菌

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The objective of this research is to develop algorithm to recognize black germ wheat based on image processing. The sample used for this study involved wheat from major producing areas of China. Images of wheat were acquired with a color linear CCD machine vision system. Each image was pre-processed to correct color offset. Then double threshold method was used to segment black germ from background and other area in wheat. Combining morphological and extracted feature gave a highly acceptable classification. The high classification accuracies obtained using a small number of features indicate the potential of the algorithm for on-line inspection of black germ wheat in industrial environment. The overall average classification accuracy among the involved varieties reaches above 93%. This paper presents the significant elements of the computer vision system and emphasizes the important aspects of the image processing technique.
机译:这项研究的目的是开发一种基于图像处理的识别黑胚小麦的算法。这项研究使用的样本来自中国主要产区的小麦。用彩色线性CCD机器视觉系统获取小麦图像。每个图像都经过了预处理,以纠正色偏。然后采用双阈值法对小麦本底和其他地区的黑胚芽进行了分割。结合形态学特征和提取特征给出了高度可接受的分类。使用少量特征获得的高分类精度表明该算法在工业环境中在线检测黑胚小麦的潜力。涉及品种之间的总体平均分类准确率达到93%以上。本文介绍了计算机视觉系统的重要组成部分,并强调了图像处理技术的重要方面。

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