Spectral Angle Mapper classification of fluorescence hyperspectral image for aflatoxin contaminated corn

H. Yao, Zuzana Hruska, R. Kincaid, Ambrose E. Ononye, Robert L. Brown, T. Cleveland
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引用次数: 15

Abstract

Aflatoxin contamination in corn is a serious problem for both producers and consumers. The present study applied the Spectral Angle Mapper classification technique to classify single corn kernels into contaminated and healthy groups. Fluorescence hyperspectral images were used in the classification. Actual corn aflatoxin concentration was chemically determined using the VICAM analytical method for quantification purpose. An obvious fluorescence peak shift was observed to be associated with the aflatoxin contaminated corn. Aflatoxin classification levels were based on Food and Drug Administration's regulation, including 20 ppb (parts per billion) for human consumption and 100 ppb for feed. Classification accuracy for the 20 ppb level is 86% with a false positive rate of 15%. For the 100 ppb level, the accuracy is 88% with a false positive rate of 16%. The results indicate that the Spectral Angle Mapper method and fluorescence hyperspectral imagery have the potential to classify aflatoxin contaminated corn kernels.
黄曲霉毒素污染玉米荧光高光谱图像的光谱角映射器分类
玉米中的黄曲霉毒素污染对生产者和消费者来说都是一个严重的问题。本研究应用光谱角映射器分类技术将单个玉米籽粒分为污染组和健康组。采用荧光高光谱图像进行分类。用化学方法测定玉米黄曲霉毒素的实际浓度。荧光峰移与黄曲霉毒素污染玉米有关。黄曲霉毒素的分类水平是根据美国食品和药物管理局的规定制定的,包括人类消费的20 ppb(十亿分之一)和饲料的100 ppb。20 ppb级别的分类准确率为86%,假阳性率为15%。对于100 ppb水平,准确率为88%,假阳性率为16%。结果表明,光谱角映射方法和荧光高光谱图像对黄曲霉毒素污染的玉米籽粒具有分类潜力。
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