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首页> 外文期刊>Infrared physics and technology >Modeling for SSC and firmness detection of persimmon based on NIR hyperspectral imaging by sample partitioning and variables selection
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Modeling for SSC and firmness detection of persimmon based on NIR hyperspectral imaging by sample partitioning and variables selection

机译:基于NIR高光谱成像的样本分区和变量选择的SSC和固体检测模型

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摘要

Nondestructive detecting for persimmon's internal quality is meaningful for post-harvest processing. This study focused on the modeling of soluble solid content (SSC) and firmness (FM) determination of persimmon with near-infrared (NIR) hyperspectral imaging within 900-1700 nm. Sample partitioning and variables selecting were used to optimize the partial least squares (PLS) regression detective models. Three sample partitioning methods included Kennard-stone (KS) algorithm, sample set partitioning joint x-y distances algorithm (SPXY) and random selection (RS) methods were adopted. Monte Carlo uninformative variables elimination (MC-UVE), competitive adaptive reweight sampling method (CARS) and successive projection algorithm (SPA) were applied for feature variables selection. For SSC and FM detecting, the best models were SPXY-MC-UVE-CARS-PLS model with 12 feature variables and Savitzky-Golay-RS-CARS-PLS with 7 feature variables respectively. The 12 and 7 feature variables are grouped together to build PLS models for SSC and FM determination and after the evaluation the regression coefficient of each variables, finally 10 and 9 selected wavelengths were selected to SSC and FM detection respectively. The final models obtained coefficient of determination (R-P(2)) of 0.757, root mean standard error of prediction (RMSEP) of 1.404 (circle)Brix and R-P(2) of 0.876, RMSEP of 0.395 kg/cm(2) for SSC and FM detection respectively. Meanwhile, we obtained the SSC and FM distribution maps which could give help to visual detection. The results in this study could provide reference for the development of online classification equipment with multi-indicators detection for persimmon.
机译:对柿子的内部质量无损检测对收获后处理有意义。该研究的重点是可溶性固体含量(SSC)和坚固性(FM)的模拟,在900-1700nm内具有近红外(NIR)高光谱成像的柿子的模拟。采样划分和变量选择用于优化部分最小二乘(PLS)回归侦探模型。三种样品分区方法包括肯纳德 - 石头(ks)算法,采样分区接头X-Y距离算法(SPXY)和随机选择(RS)方法。 Monte Carlo无信息变量消除(MC-uve),竞争性自适应重复采样方法(汽车)和连续投影算法(SPA)被应用于特征变量选择。对于SSC和FM检测,最佳型号是SPXY-MC-UVE-CARL-PLS模型,具有12个特征变量和Savitzky-Golay-RS-RS-CAR-PL,分别具有7个特征变量。将12和7个特征变量分组在一起,以构建SSC和FM确定的PLS模型,并且在评估之后分别选择每个变量的回归系数,最终10和9个选定的波长分别选择为SSC和FM检测。最终模型获得的测定系数(RP(2))为0.757,预测的根部平均标准误差为1.404(圆形)Brix和0.876的RP(2),RMSEP为0.395kg / cm(2)的SSC分别进行FM检测。同时,我们获得了可以帮助视觉检测的SSC和FM分发图。该研究的结果可以参考在线分类设备的开发,具有柿子的多指示器检测。

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