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Prediction of soluble solids content of apple using the combination of spectra and textural features of hyperspectral reflectance imaging data

机译:利用光谱和高光谱反射成像数据的纹理特征结合预测苹果中的可溶性固形物含量

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The objective of this study was to improve the detection accuracy of soluble solids content (SSC) of apples by integrating spectra and textural features. The spectral data were directly extracted from the region of interest (ROI) of hyperspectral reflectance images of apples over the region of 400-1000 nm, while the textural features were obtained by a texture analysis conducted on the ROI images based on grey-level co-occurrence matrix (GLCM). A new regression method called combined partial least square (CPLS) was proposed to analyze the integrations of spectra and different kinds of textural features. In this algorithm, the score matrix matrices of the spectral data and textural features were obtained by PLS analysis separately and then used together for calibration. The prediction results indicated that the CPLS model developed with the integration of spectra and correlation feature achieved promising results and improved SSC predictions compared with the spectral data when used alone. Next, stability competitive adaptive reweighted sampling (SCARS) was conducted to select informative wavelengths for SSC prediction. The CPLS model based on the integration of SCARS selected spectra and correlation gave better results than those with the full wavelength range. The correlation coefficient and root mean square errors of prediction set and validation set were 0.9327 and 0.641%, 0.913 and 0.6656%, respectively. Hence, the integration of spectra and correlation extracted from hyperspectral reflectance images, coupled with CPLS and SCARS methods, showed a considerable potential for the determination of SSC in apples. (C) 2016 Elsevier B.V. All rights reserved.
机译:这项研究的目的是通过整合光谱和纹理特征来提高苹果中可溶性固形物含量(SSC)的检测准确性。光谱数据直接从400-1000 nm区域的苹果高光谱反射率图像的感兴趣区域(ROI)中提取,而纹理特征是通过对基于ROI的ROI图像进行纹理分析而获得的-出现矩阵(GLCM)。提出了一种新的回归方法,称为组合偏最小二乘(CPLS),以分析光谱和各种纹理特征的积分。在该算法中,分别通过PLS分析获得光谱数据和纹理特征的得分矩阵矩阵,然后将它们一起用于校准。预测结果表明,与光谱数据单独使用相比,通过整合光谱和相关特征而开发的CPLS模型取得了可喜的结果,并改善了SSC预测。接下来,进行稳定性竞争自适应加权加权采样(SCARS),以选择用于SSC预测的信息波长。基于SCARS所选光谱和相关性积分的CPLS模型比全波长范围的CPLS模型具有更好的结果。预测集和验证集的相关系数和均方根误差分别为0.9327和0.641%,0.913和0.6656%。因此,从高光谱反射率图像中提取的光谱和相关性的积分,再加上CPLS和SCARS方法,显示了测定苹果中SSC的巨大潜力。 (C)2016 Elsevier B.V.保留所有权利。

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