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Aflatoxin contaminated chili pepper detection by hyperspectral imaging and machine learning

机译:黄皮毒素污染辣椒检测,高光谱成像和机器学习

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Mycotoxins are toxic secondary metabolites produced by fungi. They have been demonstrated to cause various health problems in humans, including immunosuppression and cancer. A class of mycotoxins, aflatoxins, has been studied extensively because they have caused many deaths particularly in developing countries. Chili pepper is also prone to aflatoxin contamination during harvesting, production and storage periods. Chemical methods to detect aflatoxins are quite accurate but expensive and destructive in nature. Hyperspectral and multispectral imaging are becoming increasingly important for rapid and nondestructive testing for the presence of such contaminants. We propose a compact machine vision system based on hyperspectral imaging and machine learning for detection of aflatoxin contaminated chili peppers. We used the difference images of consecutive spectral bands along with individual band energies to classify chili peppers into aflatoxin contaminated and uncontaminated classes. Both UV and halogen illumination sources were used in the experiments. The significant bands that provide better discrimination were selected based on their neural network connection weights. Higher classification rates were achieved with fewer numbers of spectral bands. This selection scheme was compared with an information-theoretic approach and it demonstrated robust performance with higher classification accuracy.
机译:霉菌毒素是由真菌产生的有毒次生代谢物。他们已被证明在人类中引起各种健康问题,包括免疫抑制和癌症。一类霉菌毒素,黄曲霉毒素已经过度研究,因为它们尤其是在发展中国家的许多死亡。辣椒在收获,生产和储存期间也容易发生出黄曲霉毒素污染。检测黄曲霉毒素的化学方法非常准确,但本质上是昂贵的和昂贵的。高光谱和多光谱成像对于这种污染物的存在,对于快速和无损检测变得越来越重要。我们提出了一种基于高光谱成像和机器学习的紧凑型机器视觉系统,用于检测黄曲霉毒素的辣椒。我们使用连续光谱带的差异图像以及单独的频带能量将辣椒分类为黄曲霉毒素污染和未受污染的类。在实验中使用了UV和卤素照明来源。根据其神经网络连接权重选择提供更好辨别的重要条带。通过较少数量的光谱带,实现了较高的分类率。将该选择方案与信息理论方法进行比较,并具有更高的分类精度的强大性能。

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