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基于图像分析技术的烤烟上部叶采收成熟度判别

Harvest maturity identification for upper flue-cured tobacco leaves based on image analysis technology

  • 摘要: 为实现烤烟上部叶成熟度的客观准确判断,降低人为主观因素对烤烟采收成熟度判断的错误率,在烟叶采收前,对不同田间成熟度的烤烟上部叶图像进行采集,利用MATLAB2018b提取烤烟颜色特征值与纹理特征值,建立BP神经网络模型,并对烤烟采收成熟度进行分类甄别。结果表明,不同成熟度烤烟上部叶的颜色特征值与纹理特征值有较明显的差异,所建立的BP神经网络模型能够较为准确地识别不同成熟度的烤烟上部烟叶,其中训练样本的预测值与实际值的决定系数达到0.985 5,验证样本的预测值与实际值的决定系数达到0.981 9。所建立的基于烟颜色特征值与纹理特征值的判别烤烟上部叶成熟度的BP神经网络模型具有较好的判别效果。

     

    Abstract: In order to discriminate the maturity of upper flue-cured tobacco leaves objectively and accurately and to reduce the error rate caused by subjective factors, the images of upper leaves with different field maturity were collected before harvesting, and the values of color characteristics and texture characteristics of flue-cured tobacco were extracted by MATLAB2018b. A BP neural network model was established to discriminate the harvest maturity of flue-cured tobacco. The results showed that the color characteristic values and texture characteristic values of upper flue-cured tobacco leaves of different maturity levels differed greatly. The established BP neural network model could accurately identify the upper leaves of different maturity levels. The coefficient of determinations of the predicted and actual values of the training samples both reached 0.985 5, and those of the verification samples reached 0.981 9. The established model based on color and texture characteristics was effective for discriminating the maturity of upper flue-cured tobacco leaves.

     

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