基于支持向量机的甘薯冷害光谱检测方法
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河北省引进留学人员资助项目(C2018340)


Spectral Detection Method for Chilling Damage of Sweet Potato Based on Support Vector Machine
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    摘要:

    针对甘薯早期冷害不易检测,导致甘薯品质下降,易感染其他病害等问题,建立了基于光谱技术的甘薯冷害无损检测方法。基于类可分性准则的关键特征排序法选择有效特征光谱波长,利用支持向量机算法对数据集进行训练评价,检测特征光谱波长的准确性以及甘薯早期冷害发生情况。通过对5个甘薯品种共400个样品进行实验,以训练数据与测试数据5∶5比例检测甘薯冷害准确率高达99.52%,以7∶3比例测试结果高达99.63%。实验结果证明特征光谱波段选择正确,表明光谱技术可以有效识别甘薯冷害,此研究为甘薯贮存分类等后续工作提供了技术方法支持。

    Abstract:

    The storage of sweet potato is susceptible to chilling damage, which not only affects its quality but also is susceptible to other diseases, which greatly reduces the commercial and economic value of sweet potato. For the biological detection technology and traditional detection methods will cause irreversible damage to sweet potato, so a nondestructive detection method of sweet potato chilling damage based on optical fiber spectroscopy technology was established. The feature spectrum bands were selected by the key feature ranking method based on the class separability criterion. And the support vector machine algorithm was used to train and evaluate the data set to detect the accuracy of the characteristic spectrum and the occurrence of sweet potatoes before the symptoms of chilling damage were visible to the human eyes. Totally five sweet potato varieties were used for experiments. The accuracy of detecting chilling damage in sweet potatoes was as high as 99.52% with the ratio of training data and test data of 5∶5, and the incidence of the ratio of 7∶3 was as high as 9963%. The results proved the correctness of the characteristic spectrum, and the characteristic spectral bands were as follows: Jishu26 was 821.3~823.5nm; Yanshu25 was 810.5~821.9nm; Xiguahong was 8188~821.9nm; Xinong431 was 601.5~606.4nm; and Longshu9 was 759.6~761.2nm. The results showed that the spectroscopy technology can effectively detect and identify sweet potato chilling damage. This research provided technical method for subsequent work for sweet potato storage classification. 

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张晓雪,杨志辉,曹珊珊,司永胜.基于支持向量机的甘薯冷害光谱检测方法[J].农业机械学报,2020,51(s2):471-477. ZHANG Xiaoxue, YANG Zhihui, CAO Shanshan, SI Yongsheng. Spectral Detection Method for Chilling Damage of Sweet Potato Based on Support Vector Machine[J]. Transactions of the Chinese Society for Agricultural Machinery,2020,51(s2):471-477.

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  • 收稿日期:2020-08-10
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  • 在线发布日期: 2020-12-10
  • 出版日期: 2020-12-10