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首页> 外文期刊>Transactions of the ASAE >MACHINE VISION EVALUATION OF CORN KERNEL MECHANICAL AND MOLD DAMAGE
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MACHINE VISION EVALUATION OF CORN KERNEL MECHANICAL AND MOLD DAMAGE

机译:玉米籽粒机械损伤和模具损伤的机器视觉评估

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摘要

Machine vision algorithms were developed for measuring corn (Zea mays) kernel mechanical damage and mold damage. Mechanical damage was determined using both single-kernel and batch analysis by extracting from kernel images the damaged area stained by green dye and by calculating the percentage of total projected kernel surface area that was stained green. Mold damage was determined using single-kernel analysis by isolating the moldy area on kernel images and by calculating the percentage of total projected kernel surface area covered by mold. The vision system demonstrated high accuracy and consistency for both mechanical and mold damage measurement. The standard deviation for machine vision system measurements was less than 5% of the mean value, which is substantially smaller than for other damage measurement methods.
机译:开发了机器视觉算法来测量玉米(Zea mays)仁的机械损伤和霉菌损伤。通过从内核图像中提取被绿色染料染色的受损区域并通过计算被投影为绿色的总投影内核表面积的百分比,使用单内核分析和批次分析来确定机械损伤。通过单核分析确定霉菌的损坏程度,方法是在籽粒图像上隔离霉菌区域,并计算霉菌覆盖的预计总籽粒表面积的百分比。该视觉系统在机械和模具损坏测量中均显示出很高的准确性和一致性。机器视觉系统测量的标准偏差小于平均值的5%,该平均值明显小于其他损伤测量方法的平均值。

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