基于Shuffle-Net的发芽马铃薯无损检测方法
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财政部和农业农村部:国家现代农业产业技术体系专项(CARS-10)


Non-destructive Detection of Sprouting Potatoes Based on Shuffle-Net
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    摘要:

    针对发芽马铃薯在线检测需求,提出使用轻量级卷积神经网络对发芽薯进行检测。首先将获取的马铃薯样本基于分级线进行图像采集,经过数据增强扩充样本。搭建Shuffle-Net轻量级卷积神经网络,对比了不同学习率与学习率衰减策略对模型的影响。试验发现,当学习率为0.001,衰减策略为W-EP时表现最佳,发芽薯与健康薯的总体识别准确率为97.8%,单个样本识别时间为0.14s,模型内存占用量为5.2MB。对实验结果进行评价,查准率为98.0%,查全率为97.1%,特异性为98.4%,调和均值为97.5%。选择VGG11、Alex-Net、Res-Net101模型与本文模型进行对比,发现本文模型识别准确率较VGG11与Alex-Net有大幅度提升,单个样本识别速度较Res-Net101提高5倍、较VGG11提高近7倍,模型体量较VGG11、Alex-Net、Res-Net101大幅度减少。将模型内部卷积进行了可视化分析并对结果进行了误判分析,发现当芽体颜色暗、较短且处于薯体边缘的情况下,会造成误判。由此可得本实验模型实现了发芽薯准确、有效的识别,同时还具有识别速度快、体量小、移植性强的优点,可为农产品外部无损检测分级提供理论支撑。

    Abstract:

    In view of the demand for online detection of sprouted potatoes, a lightweight convolutional neural network was proposed to detect sprouted potatoes. Firstly, the acquired potato samples were collected based on the grading line, and the samples were expanded through data enhancement. The Shuffle-Net lightweight convolutional neural network was built, and the effects of different learning rates and learning rate decay strategies on the model were compared. Experiment results showed that when the learning rate was 0.001 and the decay strategy was W-EP, the performance was the best. The overall recognition accuracy of sprouted potato and healthy potato was 97.8%, the single sample recognition time was 0.14s, and the model memory footprint was 5.2MB. The experimental results were evaluated, the precision was 98.0%, the recall was 97.1%, the specificity was 98.4%, and the harmonic mean was 97.5%. The VGG11, Alex-Net, and Res-Net101 models were selected for comparison with the model. It was found that the recognition accuracy of the model was greatly improved compared with that of the VGG11 and Alex-Net, and the recognition speed of a single sample was 5 times higher than that of Res-Net101. Compared with VGG11, it was nearly 7 times higher, and the model volume was greatly reduced compared with that of VGG11, Alex-Net, and Res-Net101. In the experiment, the internal convolution of the model was visually analyzed and the results were misjudged. It was found that when the buds were dark, short and at the edge of the tuber, misjudgment would be caused. It can be concluded that this experimental model realized the accurate and effective identification of sprouted potato, and it also had the advantages of fast identification speed, small size and strong portability, which can provide theoretical support for the external nondestructive testing and classification of agricultural products.

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王飞云,吕程序,吴金灿,丛杰,吕黄珍,赵博.基于Shuffle-Net的发芽马铃薯无损检测方法[J].农业机械学报,2022,53(s1):309-315. WANG Feiyun, Lü Chengxu, WU Jincan, CONG Jie, Lü Huangzhen, ZHAO Bo. Non-destructive Detection of Sprouting Potatoes Based on Shuffle-Net[J]. Transactions of the Chinese Society for Agricultural Machinery,2022,53(s1):309-315.

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  • 收稿日期:2022-06-25
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  • 在线发布日期: 2022-11-10
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