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Aflatoxin Detection in Whole Corn Kernels Using Hyperspectral Methods

机译:使用高光谱方法在整个玉米核中检测过敏毒素

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Hyperspectral (HS) data for the inspection of whole corn kernels for aflatoxin is considered. The high-dimensionality of HS data requires feature extraction or selection for good classifier generalization. For fast and inexpensive data collection, only several features (λ responses) can be used. These are obtained by feature selection from the full HS response. A new high dimensionality branch and bound (HDBB) feature selection algorithm is used; it is found to be optimum, fast and very efficient. Initial results indicate that HS data is very promising for aflatoxin detection in whole kernel corn.
机译:考虑了用于检查整个玉米核的Hyperspectral(HS)数据用于黄曲霉毒素。 HS数据的高度规格需要特征提取或选择,以获得良好的分类器泛化。对于快速和廉价的数据收集,只能使用多个特征(λ响应)。这些是通过从完整HS响应的特征选择获得的。使用新的高维分支和绑定(HDBB)特征选择算法;它被发现是最佳的,快速而非常有效。初始结果表明,HS数据对于整个核玉米中的黄曲霉毒素检测非常有前途。

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