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首页> 外文期刊>Journal of Food Measurement and Characterization >Hyperspectral imaging as an effective tool for prediction the moisture content and textural characteristics of roasted pistachio kernels
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Hyperspectral imaging as an effective tool for prediction the moisture content and textural characteristics of roasted pistachio kernels

机译:高光谱成像作为预测焙烧开心核的水分含量和纹理特征的有效工具

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摘要

The objective of this study was to develop calibration models for prediction of moisture content and textural characteristics (fracture force, hardness, apparent modulus of elasticity and compressive energy) of pistachio kernels roasted in different conditions (temperatures 90, 120 and 150 A degrees C; times 20, 35 and 50 min and air velocities 0.5, 1.5 and 2.5 m/s) using Vis/NIR hyperspectral imaging and multivariate analysis. The effects of different pre-processing methods and spectral treatments such as normalization [multiplicative scatter correction (MSC), standard normal variate transformation (SNV)], smoothing (median filter, Savitzky-Golay and Wavelet) and differentiation (first derivative, D-1 and second derivative, D-2) on the obtained data were investigated. The prediction models were developed by partial least square regression (PLSR) and artificial neural network (ANN). The results indicated that ANN models have higher potential to predict moisture content and textural characteristics of roasted pistachio kernels comparing to PLSR models. High correlation was observed between reflectance data and fracture force (R-2 = 0.957 and RMSEP = 3.386) using MSC, Savitzky-Golay and D-1, compressive energy (R-2 = 0.907 and RMSEP = 15.757) using the combination of MSC, Wavelet and D-1, moisture content (R-2 = 0.907 and RMSEP = 0.179) and apparent modulus of elasticity (R-2 = 0.921 and RMSEP = 2.366) employing combination of SNV, Wavelet and D-1, respectively. Moreover, Vis-NIR data correlated well with hardness (R-2 = 0.876 and RMSEP = 5.216) using SNV, Wavelet and D-2. These results showed the capability of Vis/NIR hyperspectral imaging and the central role of multivariate analysis in developing accurate models for prediction of moisture content and textural properties of roasted pistachio kernels.
机译:本研究的目的是开发用于在不同条件(温度90,120和150℃的温度90,120和150℃的腐蚀性含水量和纹理特征(断裂力,硬度,弹性和压缩能量)的校准模型(骨折,硬度,弹性和压缩能量);使用VI / NIR高光谱成像和多变量分析时,时间20,35和50分钟和空气速度0.5,1.5和2.5m / s。不同预处理方法的影响和光谱处理,如归一化[乘法散射校正(MSC),标准正常变换(SNV),平滑(中值滤波器,Savitzky-golay和小波)和分化(第一次衍生,D-研究了所获得的数据的1和第二衍生物D-2)。预测模型由部分最小二乘回归(PLSR)和人工神经网络(ANN)开发。结果表明,ANN模型具有更高的潜力,可预测与PLSR模型相比的烘焙开心内核的湿度含量和纹理特征。使用MSC,SAVITZKY-GOLAY和D-1,压缩能量(R-2 = 0.907和RMSEP = 15.757)在反射数据和断裂力(R-2 = 0.957和RMSEP = 3.386)之间观察到高相关性使用MSC的组合,小波和D-1,水分含量(R-2 = 0.907和RMSEP = 0.179),以及采用SNV,小波和D-1的组合的表现弹性模量(R-2 = 0.921和RMSEP = 2.366)。此外,使用SNV,小波和D-2与硬度(R-2 = 0.876和RMSEP = 5.216)相关的Vis-Nir数据。这些结果表明,VIS / NIR高光谱成像的能力和多元分析在发育准确模型中的核心分析的核心作用,以预测烤的开心籽粒的水分含量和纹理性质。

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