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SVM-based feature extraction and classification of aflatoxin contaminated corn using fluorescence hyperspectral data

机译:使用荧光高光谱数据基于SVM的黄曲霉毒素污染玉米特征提取和分类

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Support Vector Machine (SVM) was used in the Genetic Algorithms (GA) process to select and classify a subset of hyperspectral image bands. The method was applied to fluorescence hyperspectral data for the detection of aflatoxin contamination in Aspergillus flavus infected single corn kernels. In the band selection process, the training sample classification accuracy was used as fitness function. Two aflatoxin thresholds, 20 ppb and 100 ppb, were used to divide the single corn kernels into clean and contaminated samples. The validation accuracy was 87.7% for the 20 ppb threshold and 90.5% for the 100 ppb threshold. The results were generated from the GA selected 36 bands and 11 bands, respectively. Compared to the full wavelength classification, the subset of image bands had slightly better or similar performance. A reduced image space could save time both in spectral data acquisition and analysis, which is crucial in the development of rapid and none invasive methods for contamination detection.
机译:支持向量机(SVM)在遗传算法(GA)过程中用于选择和分类高光谱图像带的子集。该方法应用于荧光高光谱数据,用于检测黄曲霉感染的单个玉米粒中的黄曲霉毒素污染。在波段选择过程中,训练样本分类的准确性被用作适应度函数。使用两个黄曲霉毒素阈值(20 ppb和100 ppb)将单个玉米粒分成干净且受污染的样品。 20 ppb阈值的验证准确度为87.7%,100 ppb阈值的验证准确度为90.5%。结果分别来自GA选择的36个频段和11个频段。与全波长分类相比,图像波段的子集具有更好或相似的性能。减少的图像空间可以节省光谱数据采集和分析的时间,这对于开发快速,无创的​​污染检测方法至关重要。

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