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Near-infrared hyperspectral imaging for detecting Aflatoxin B-1 of maize kernels

机译:近红外高光谱成像技术检测玉米粒中的黄曲霉毒素B-1

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The feasibility of detecting the Aflatoxin B-1 in maize kernels inoculated with Aspergillus flans conidia in the field was assessed using near-infrared hyperspectral imaging technique. After pixel-level calibration, wavelength dependent offset, the masking method was adopted to reduce the noise and extract region of interest (ROI's) of spectral image, then an explanatory principal component analysis (PCA) followed by inverse PCA and secondary PCA was conducted to enhance the signal to noise ratio (SNR), reduce the dimensionality, and extract valuable information of spectral data. By interactive analysis between score image, score plot and load line plot, the first two PCs were found to indicate the spectral characteristics of healthy and infected maize kernels respectively. And the wavelengths of 1729 and 2344 nm were also identified to indicate AFB(1) exclusively. The n-dimensional visualization method based on PC3 to PC7 was adapted to select the two classes of end members as the input data of the spectral angle mapper (SAM) classifier to separate the aflatoxin infection and clean kernels. The result was compared with chemical analysis of Aflatest (R). And the verification accuracy of pixel level reached 100% except the tip parts of some healthy kernels were falsely identified as aflatoxin contamination. Furthermore, another 26 maize kernels were selected as an independent data set to verify the reproducibility of the method proposed, and the detection accuracy attained to 92.3%, which demonstrated that hyperspectral imaging technique can be used to detect aflatoxin in artificially inoculated maize kernels in the field. (C) 2014 Elsevier Ltd. All rights reserved.
机译:使用近红外高光谱成像技术评估了田间接种曲霉孢子分生孢子的玉米粒中黄曲霉毒素B-1的可行性。经过像素级校准,波长相关偏移,掩膜方法以减少噪声并提取光谱图像的感兴趣区域(ROI),然后进行解释性主成分分析(PCA),然后进行逆PCA和次级PCA增强信噪比(SNR),降低维数并提取频谱数据的有价值的信息。通过评分图像,评分图和负荷线图之间的交互分析,发现前两台PC分别指示了健康玉米粒和受感染玉米粒的光谱特征。并且还确定了1729和2344 nm的波长专门用于指示AFB(1)。基于PC3到PC7的n维可视化方法适用于选择两类末端成员作为光谱角映射器(SAM)分类器的输入数据,以分离黄曲霉毒素感染和干净的谷粒。将结果与Aflatest(R)的化学分析进行比较。除某些健康谷粒的尖端部分被误认为是黄曲霉毒素污染外,像素水平的验证准确性达到了100%。此外,还选择了另外26个玉米粒作为独立数据集,以验证所提出方法的可重复性,检测精度达到92.3%,这表明高光谱成像技术可用于在玉米中人工接种的玉米粒中检测黄曲霉毒素。领域。 (C)2014 Elsevier Ltd.保留所有权利。

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