基于光谱-纹理特征的辣椒早疫病潜育期高光谱图像检测识别
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1.贵阳学院农产品无损检测中心;2.贵州大学大数据与信息工程学院

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基金项目:

国家自然科学基金


Research on hyperspectral image detection and recognition of pepper early blight incubation period based on spectral and texture features
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Affiliation:

1.Guiyang University, Guizhou Agricultural Products Nondestructive Testing Center;2.School of Big Data and Information Engineering, Guizhou University

Fund Project:

The National Natural Science Foundation of China

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    摘要:

    目的:早疫病是茄科作物生长过程中的一种常见破坏性病害,严重时会导致作物歉收而损失严重,传统的作物病害检测方法难以在病害潜育期及时发现病害特征从而采取科学有效的防治措施。本文通过高光谱成像仪连续监测从而获得不同感染期辣椒早疫病的高光谱图像,利用光谱角余弦-相关系数和切比雪夫距离确定了辣椒早疫病潜育期最早可识别时间(本实验潜育期最早可识别时间为接种后24 h)。方法:以辣椒早疫病潜育期病状作为研究对象,采用遗传算法筛选出13个特征波长,经特征波长优化组合并结合逻辑回归模型建立基于光谱特征的作物病害潜育期病状识别模型。同时,利用局部二值模式建立基于图像纹理特征的辣椒早疫病潜育期识别模型。结果:实验以120个样本进行测试,基于光谱特征的作物病害潜育期病状检测识别模型在训练集和测试集的准确率均达到93%以上;基于纹理特征的作物病害潜育期病状检测识别模型在训练集和测试集的准确率分别达到了98.96%和100%。结论:结果显示:利用光谱特征或者纹理特征均可实现作物病害潜育期病状的检测识别,纹理特征相比光谱特征更显著地揭示了病害潜育期特征,有效提升了模型检测性能。本文研究成果可为其他作物病害潜育期病状的监测识别提供理论参考。

    Abstract:

    Objective Early blight is a common destructive disease in the growth process of Solanaceae crops, which can lead to crop failure and serious losses. Traditional crop disease detection methods are difficult to detect disease characteristics in a timely manner during the incubation period of disease, and thus take scientific and effective prevention and control measures. This article obtained hyperspectral images of early blight of peppers at different infection stages through continuous monitoring with a hyperspectral imager. The earliest identifiable time during the incubation period of early blight in peppers (the earliest identifiable time during the incubation period in this experiment was 24 h after inoculation) was determined using the spectral angle cosine-correlation coefficient and Chebyshev distance. Method Taking the symptoms of the latent period of early blight in peppers as the research object, 13 characteristic wavelengths were selected using a genetic algorithm. An identification model of crop disease latent period symptoms based on spectral features was established through optimized combinations of characteristic wavelengths combined with a logistic regression model. Simultaneously, a recognition model of the latent period of early blight in peppers based on image texture features was established using local binary patterns. Result The experiment was tested with 120 samples. The accuracy of the identification model of crop disease latent period symptoms based on spectral features reached over 93% in both the training set and the test set. The accuracy of the identification model of crop disease latent period symptoms based on texture features reached 98.96% and 100% in the training set and test set, respectively. Conclusion The results showed that both spectral features and texture features can be used to detect and identify crop disease latent period symptoms. Texture features more significantly revealed the characteristics of the latent period of the disease compared to spectral features, effectively improving the detection performance of the model. The research results in this article can provide theoretical references for monitoring and identifying other crop disease latent period symptoms.

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沈梦姣,鲍浩,张艳.基于光谱-纹理特征的辣椒早疫病潜育期高光谱图像检测识别[J].生物化学与生物物理进展,,():

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  • 收稿日期:2024-04-03
  • 最后修改日期:2024-06-29
  • 接受日期:2024-07-01
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