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Spectral identification of melon seeds variety based on k-nearest neighbor and Fisher discriminant analysis

机译:基于k近邻和Fisher判别分析的瓜子品种光谱鉴定

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Impurity of melon seeds variety will cause reductions of melon production and economic benefits of farmers, this research aimed to adopt spectral technology combined with chemometrics methods to identify melon seeds variety. Melon seeds whose varieties were "Yi Te Bai", "Yi Te Jin", "Jing Mi NO.7", "Jing Mi NO.11" and " Yi Li Sha Bai "were used as research samples. A simple spectral system was developed to collect reflective spectral data of melon seeds, including a light source unit, a spectral data acquisition unit and a data processing unit, the detection wavelength range of this system was 200-1100nm with spectral resolution of 0.14 ~7.7nm. The original reflective spectral data was pre-treated with de-trend (DT), multiple scattering correction (MSC), first derivative (FD), normalization (NOR) and Savitzky-Golay (SG) convolution smoothing methods. Principal Component Analysis (PCA) method was adopted to reduce the dimensions of reflective spectral data and extract principal components. K-nearest neighbour (KNN) and Fisher discriminant analysis (FDA) methods were used to develop discriminant models of melon seeds variety based on PCA. Spectral data pretreatments improved the discriminant effects of KNN and FDA, FDA generated better discriminant results than KNN, both KNN and FDA methods produced discriminant accuracies reaching to 90.0% for validation set. Research results showed that using spectral technology in combination with KNN and FDA modelling methods to identify melon seeds variety was feasible.
机译:瓜子品种的杂质会导致瓜果产量的减少和农民的经济利益,本研究旨在采用光谱技术结合化学计量学方法来鉴定瓜子品种。以“伊特白”,“伊特金”,“京密7号”,“京密11号”和“伊犁沙白”为品种的甜瓜种子为研究样本。开发了一个简单的光谱系统来收集瓜子的反射光谱数据,包括光源单元,光谱数据采集单元和数据处理单元,该系统的检测波长范围为200-1100nm,光谱分辨率为0.14〜7.7纳米原始反射光谱数据经过去趋势(DT),多次散射校正(MSC),一阶导数(FD),归一化(NOR)和Savitzky-Golay(SG)卷积平滑方法进行了预处理。采用主成分分析(PCA)方法来减小反射光谱数据的维数并提取主成分。利用K-近邻(KNN)和Fisher判别分析(FDA)方法开发了基于PCA的瓜子品种判别模型。光谱数据预处理改善了KNN和FDA的判别效果,与KNN相比,FDA产生了更好的判别结果,对于验证集,KNN和FDA方法产生的判别精度均达到90.0%。研究结果表明,将光谱技术与KNN和FDA建模方法相结合来鉴定瓜子品种是可行的。

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