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基于高光谱漫透射成像可视化检测脐橙可溶性固形物
引用本文:介邓飞,李泽海,赵竣威,连裕翔,魏萱.基于高光谱漫透射成像可视化检测脐橙可溶性固形物[J].发光学报,2017,38(5):685-691.
作者姓名:介邓飞  李泽海  赵竣威  连裕翔  魏萱
作者单位:1. 华中农业大学工学院, 湖北 武汉 430070; 2. 福建农林大学机电工程学院, 福建 福州 350002
基金项目:现代农业(柑橘)产业技术体系建设专项资金,中央高校基本科研业务费(2662014BQ091;2662015PY078)资助项目 Support by Project of Special Funds for The Construction of Modem Agriculture (Citrus) Industry Technology System,Fundamental Research Funds for The Central Universities
摘    要:厚皮类瓜果内部品质的无损检测是目前水果产业的检测技术瓶颈。本文采用高光谱漫透射技术对脐橙可溶性固形物(SSC)含量进行可视化分析研究。通过基线校正(Baseline)预处理结合连续投影算法(SPA)优选9个特征波长,建立SSC偏最小二乘回归(PLSR)模型,校正集相关系数r_(cal)为0.891,校正集均方根误差RSMEC为0.612°Brix,预测集相关系数r_(pre)为0.889,预测集均方根误差RMSEP为0.630°Brix。最后,计算各个像素点的SSC值结合图像处理技术得出SSC的可视化分布图,直观判断脐橙SSC含量高低。

关 键 词:脐橙  可溶性固形物  高光谱成像  可视化  无损检测
收稿时间:2016-11-05

Visualized Detection of Soluble Solid Content Distribution of Navel Orange Based on Hyperspectral Diffuse Transmittance Imaging
JIE Deng-fei,LI Ze-hai,ZHAO Jun-wei,LIAN Yu-xiang,WEI Xuan.Visualized Detection of Soluble Solid Content Distribution of Navel Orange Based on Hyperspectral Diffuse Transmittance Imaging[J].Chinese Journal of Luminescence,2017,38(5):685-691.
Authors:JIE Deng-fei  LI Ze-hai  ZHAO Jun-wei  LIAN Yu-xiang  WEI Xuan
Institution:1. College of Engineering, Huazhong Agricultural University, Wuhan 430070, China; 2. College of Mechanical and Electronic Engineering, Fujian Agriculture and Forestry University, Fuzhou 350002, China
Abstract:Compared with the fruit with thin skin,it is more difficult to acquire the internal quality information of fruits with thick skin.In this study,the hyperspectral diffuse transmission technique was used to visually analyze the soluble solids content (SSC) of navel orange.By comparison of the results,the model using the spectra pretreated by baseline correction as the input was the best one.Based on the baseline corrected spectra,successive projections algorithm (SPA) was applied to select feature wavelengths and finally 9 bands were remained.The results of the partial least squares regression (PLSR) model for SSC prediction indicate that the correlation coefficient of calibration (rca1) is 0.891,the root mean square error of calibration (RSMEC) is 0.612,the correlation coefficient of prediction (rpre) is 0.889,and the root mean square error of prediction (RMSEP) is 0.630,respectively.Using the spectra of feature wavelengths as the input,the multiple linear regression (MLR) models for SSC prediction were calibrated.Based on the MLR model,each pixel value of the images was calculated.Combined with the image processing,the distribution maps of SSC in navel orange were drawn.So,the SSC of navel orange can be intuitive judged.
Keywords:navel orange  soluble solids content  hyperspectral imaging  visualization  nondestructive detection
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