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Classification of sound and stained wheat grains using visible and near infrared hyperspectral image analysis

机译:使用可见和近红外高光谱图像分析对声音和染色的小麦籽粒进行分类

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Near infrared hyperspectral image analysis has been used to classify individual wheat grains representing 24 different Australian varieties as sound or as being discoloured by one of the commercially important blackpoint, field fungi or pink stains. The study used a training set of 188 grains and a test set of 665 grains. The spectra were smoothed and then standardised by dividing each spectrum by its mean, so that the analysis was based solely on spectral shape. Penalised discriminant analysis was first used for pixel classification and then a simple rule for grain classification was developed. Overall classification accuracies of 95% were achieved over the 420-2500 nm wavelength range, as well as reduced ranges of 420-1000 nm and 420-700 nm.
机译:近红外高光谱图像分析已用于将代表24种不同澳大利亚品种的单个小麦籽粒分类为有声或因商业上重要的黑点,田间真菌或粉红色变色而变色。该研究使用了188粒谷物的训练套和665粒谷物的测试套。光谱经过平滑处理,然后通过将每个光谱除以平均值进行标准化,因此分析仅基于光谱形状。惩罚判别分析首先用于像素分类,然后开发了用于谷物分类的简单规则。在420-2500 nm的波长范围内以及420-1000 nm和420-700 nm的缩小范围内,总体分类精度达到了95%。

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