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首页> 外文期刊>Computers and Electronics in Agriculture >A non-destructive and highly efficient model for detecting the genuineness of maize variety 'JINGKE 968 ' using machine vision combined with deep learning
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A non-destructive and highly efficient model for detecting the genuineness of maize variety 'JINGKE 968 ' using machine vision combined with deep learning

机译:使用机器视觉与深层学习相结合的机器视觉检测玉米品种“景科968”真实性的非破坏性和高效模型

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摘要

Seed genuineness and varietal purity are key indicators of seed quality. Detecting the genuineness of a single seed can simultaneously determine seed purity. The traditional methods for detecting seed genuineness or identifying a variety are time-consuming, costly, and destructive. This study intends to establish a low-cost, efficient, and non-destructive method to detect the genuineness of single maize seeds, based on RGB images combined with deep learning. Eight hundred maize seeds of JINGKE 968 from different lots in different years and 800 seeds of other varieties were selected. Scanned images of both the germ and non-germ surfaces of the seeds were collected. The images were divided into a training set and a validation set according to the ratio of 7:3. A total of 17,600 images were obtained after data augmentation. The VGG16 network was used for transfer learning after fine-tuning, to identify and classify the seed images, and then to establish the model to detect the genuineness of the maize variety 'JINGKE 968'. The results show that the optimal detection accuracy was over 99%, and the model loss was maintained at about 0.05. Another 100 suspected samples were tested, and the recognition accuracy was as high as 98%. In summary, this study provided a non-destructive, highly efficient, fairly reliable, simple and cost saving method to identify true and false individuals of JINGKE 968. These results can serve as a reference to identify the genuineness of seeds for other crops.
机译:None

著录项

  • 来源
  • 作者单位

    China Agr Univ Beijing Innovat Ctr Seed Technol MOA Beijing Key Lab Crop Genet Improvement Dept Plant Genet &

    Breeding &

    Seed Sci Coll Agron Beijing 100193 Peoples R China;

    China Agr Univ Dept Plant Genet &

    Breeding &

    Seed Sci Coll Agron &

    Biotechnol Minist Educ Beijing Key L State Key Lab Agrobiotechnol Key Lab Crop Heteros Beijing 100193 Peoples R China;

    China Agr Univ Beijing Innovat Ctr Seed Technol MOA Beijing Key Lab Crop Genet Improvement Dept Plant Genet &

    Breeding &

    Seed Sci Coll Agron Beijing 100193 Peoples R China;

    China Agr Univ Beijing Innovat Ctr Seed Technol MOA Beijing Key Lab Crop Genet Improvement Dept Plant Genet &

    Breeding &

    Seed Sci Coll Agron Beijing 100193 Peoples R China;

    China Agr Univ Beijing Innovat Ctr Seed Technol MOA Beijing Key Lab Crop Genet Improvement Dept Plant Genet &

    Breeding &

    Seed Sci Coll Agron Beijing 100193 Peoples R China;

    China Agr Univ Beijing Innovat Ctr Seed Technol MOA Beijing Key Lab Crop Genet Improvement Dept Plant Genet &

    Breeding &

    Seed Sci Coll Agron Beijing 100193 Peoples R China;

    China Agr Univ Beijing Innovat Ctr Seed Technol MOA Beijing Key Lab Crop Genet Improvement Dept Plant Genet &

    Breeding &

    Seed Sci Coll Agron Beijing 100193 Peoples R China;

    China Agr Univ Beijing Innovat Ctr Seed Technol MOA Beijing Key Lab Crop Genet Improvement Dept Plant Genet &

    Breeding &

    Seed Sci Coll Agron Beijing 100193 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农业科学;计算技术、计算机技术;
  • 关键词

    Maize seed; Machine vision; Transfer learning; Genuineness; Variety identification; Varietal purity;

    机译:玉米种子;机器愿景;转移学习;真实性;品种鉴定;品种纯度;

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