首页> 外文会议>2010 Sixth International Conference on Natural Computation >Detection of cowpea weevil (Callosobruchus maculatus (F.)) in soybean with hyperspectral spectrometry and a backpropagation neural network
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Detection of cowpea weevil (Callosobruchus maculatus (F.)) in soybean with hyperspectral spectrometry and a backpropagation neural network

机译:高光谱和反向传播神经网络检测大豆中的cow豆象鼻虫(Callosobruchus maculatus(F.))

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To improve stored legumes protection, and to implement timely targeted insect pest control measures, it is essential to have better tools for accurate early detection and quantification of damage caused by the cowpea weevils. The hyperspectral spectrometry and a backpropagation neural network (BPNN) model were used to detect the cowpea weevils (Callosobruchus maculatus (F.)) in soybean. Spectrum of each sample was measured using a ASD FieldSpec® 3 Spectroradiometer fitted with a High Intensity Contact Probe. Spectra data were processed by ANOVA (Analysis of variance) and BPNN using MATLAB. After the optimum eigenvalues were determined based on the spectral curves, they are used as input vectors to create the BPNN model. Results showed that: The sensitive bands 780–900nm, 920–1000nm, and 1205–1560nm, have the potential to detect the infestation caused by cowpea weevils in soybeans; The eigenvalues, such as the crest or trough positions of the spectral curves, and the slope degree of the edges of the first derivative spectrum, were found to be useful and optimum eigenvalues for differentiating the infested soybean samples caused by cowpea weevils from non-infested soybean samples; The correct classification of the obtained BPNN model arrived 87.5% for the testing samples set and 93.5% for the total samples set. It can be concluded that cowpea weevils in soybean could be detected using hyperspectral spectrometry and a BPNN model.
机译:为了改善豆类储藏物的保护,并及时采取有针对性的害虫防治措施,必须拥有更好的工具,以便对detection豆象鼻虫造成的损害进行准确的早期检测和量化。高光谱和反向传播神经网络(BPNN)模型用于检测大豆中的cow豆象鼻虫(Callosobruchus maculatus(F.))。使用配备有高强度接触探针的ASDFieldSpec®3分光辐射仪测量每个样品的光谱。使用MATLAB通过ANOVA(方差分析)和BPNN处理光谱数据。根据光谱曲线确定最佳特征值后,将它们用作输入向量以创建BPNN模型。结果表明:780–900nm,920–1000nm和1205–1560nm敏感带具有检测大豆中cow豆象鼻虫侵扰的潜力;发现特征值(例如光谱曲线的波峰或波谷位置以及一阶导数光谱的边缘的倾斜度)对于区分and豆象鼻虫引起的受侵染的大豆样品与未侵染的大豆样品是有用的最佳特征值。大豆样品;所获得的BPNN模型的正确分类对于测试样本集达到了87.5%,对于总样本集达到了93.5%。可以得出结论,可以使用高光谱和BPNN模型检测大豆中的cow豆象鼻虫。

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