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应用可见/近红外高光谱成像测定鲑鱼片脂肪含量分布(英文)
引用本文:朱逢乐,彭继宇,高峻峰,赵艳茹,余克强,何勇. 应用可见/近红外高光谱成像测定鲑鱼片脂肪含量分布(英文)[J]. 农业工程学报, 2014, 30(23): 314-323
作者姓名:朱逢乐  彭继宇  高峻峰  赵艳茹  余克强  何勇
作者单位:1. 浙江大学生物系统工程与食品科学学院,杭州,310058
2. 浙江大学生物系统工程与食品科学学院,杭州 310058; 农业部设施农业装备与信息化重点实验室,杭州 310058
基金项目:863 National High-Tech Research and Development Plan (Project No. 2013AA102301)
摘    要:脂肪作为一种重要的品质参数,在大西洋鲑鱼片中的分布很不均匀。为寻找一种能替代脂肪化学检测的快速无损的方法,该研究应用可见/近红外高光谱成像测定大西洋鲑鱼片的脂肪含量分布。分别采用可见/短波近红外(400-1100 nm)和近红外(900-1700 nm)系统获取大西洋鲑鱼片样本的高光谱图像。提取样本图像的平均光谱并与其相应的脂肪含量化学值采用偏最小二乘回归(partial least squares regression,PLSR)和最小二乘支持向量机(least-squares support vector machines,LS-SVM)建立相关性模型。为降低高光谱图像的共线性和冗余度,基于竞争性自适应重加权算法(competitive adaptive reweighted sampling,CARS)分别在可见/短波近红外和近红外光谱区间提取16个(468,479,728,734,785,822,863,890,895,899,920,978,1005,1033,1040,1051 nm)和15个(975,995,1023,1047,1095,1124,1167,1210,1273,1316,1354,1368,1575,1632,1661 nm)特征波长,并分别建立PLSR和LS-SVM模型。特征波长模型的性能优于全波段模型,且近红外区间的特征波长PLSR模型为最优,预测决定系数(R2p)为0.92,预测均方根误差(root mean square error of prediction,RMSEP)为0.92%,剩余预测偏差(residual predictive deviation,RPD)为3.50。最后,将最优模型用于预测高光谱图像上所有像素点的脂肪含量以展示样本上脂肪的分布。此外,还基于该技术对大西洋鲑整鱼片实现了脂肪分布可视化。结果表明高光谱成像技术结合化学计量学方法在大西洋鲑鱼片脂肪的定量和分布可视化上有一定的研究和应用前景。

关 键 词:近红外光谱  模型  可视化  高光谱成像  脂肪  大西洋鲑  竞争性自适应重加权算法
收稿时间:2014-07-16
修稿时间:2014-10-08

Determination and visualization of fat contents in salmon fillets based on visible and near-infrared hyperspectral imagery
Zhu Fengle,Peng Jiyu,Gao Junfeng,Zhao Yanru,Yu Keqiang and He Yong. Determination and visualization of fat contents in salmon fillets based on visible and near-infrared hyperspectral imagery[J]. Transactions of the Chinese Society of Agricultural Engineering, 2014, 30(23): 314-323
Authors:Zhu Fengle  Peng Jiyu  Gao Junfeng  Zhao Yanru  Yu Keqiang  He Yong
Affiliation:1. College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China,1. College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China,1. College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China,1. College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China,1. College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China and 1. College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China2. Key Laboratory of Equipment and Informatization in Environment Controlled Agriculture, Ministry of Agriculture, Hangzhou 310058, China
Abstract:Abstract: As an important quality criterion in Atlantic salmon (Salmo salar), fat distributes heterogeneously throughout the whole salmon fillets. In this study, visible and near-infrared hyperspectral imaging was employed to determine the spatial distribution of fat in salmon fillets non-invasively and rapidly. One hundred cubed samples were cut out from different locations of different whole fillets to maximize fat content variation. After acquiring hyperspectral images with two systems operated in visible and short-wave near-infrared (Vis/SWNIR, 400-1100 nm) and near-infrared (NIR, 900-1700 nm) ranges, salmon samples were subjected to standard chemical analysis to measure their reference fat contents. Region of interests (ROI) was identified to isolate fish from the background in hyperspectral images, and the averaged reflectance spectra of the ROI image were extracted for all samples. Due to the low signal-to-noise ratio in the starting and ending spectral regions of both systems, only 740 Vis/SWNIR bands (459-1056 nm) and 151 NIR bands (947-1666 nm) were applied. The total samples were randomly divided into calibration set of 65 samples and prediction set of 35 samples. Then the extracted spectral variables with full wavelengths in two spectral sets for calibration samples were correlated with their corresponding reference fat contents using partial least squares regression (PLSR) and least-squares support vector machines (LS-SVM), respectively. And fat values for samples in the prediction set were predicted using the established models. Though good prediction results were achieved using full wavelengths, some redundant information exist among contiguous wavelengths due to the high degree of dimensionality in hyperspectral images. Competitive adaptive reweighted sampling (CARS) algorithm was employed to select effective wavelengths (EWs) for two spectral sets. Sixteen EWs of 468, 479, 728, 734, 785, 822, 863, 890, 895, 899, 920, 978, 1005, 1033, 1040, 1051 nm were selected in Vis/SWNIR spectral region, and fifteen wavelengths of 975, 995, 1023, 1047, 1095, 1124, 1167, 1210, 1273, 1316, 1354, 1368, 1575, 1632, 1661 nm were selected in NIR region. Then calibration models of EWs-PLSR and EWs-LS-SVM were established on the basis of the selected EWs of two spectral sets respectively. Improved performances for fat determination were observed for EWs-based models compared with full-spectrum models while the computational cost reduced greatly. And the linear EWs-PLSR model with NIR spectra was identified as the optimal model for fat prediction with determination coefficient of prediction (R2p) of 0.92, root mean square error of prediction (RMSEP) of 0.92%, and residual predictive deviation (RPD) for prediction of 3.50. Finally, the EWs-PLSR model was transferred to all pixels in the NIR hyperspectral images to predict their fat values for visualizing fat distribution in salmon samples. Fat distribution images for two whole salmon fillets were also generated to further explore the feasibility of hyperspectral imaging combined with the optimal model for fat visualization in whole fillets. Images like these could not only enable producers to perform proper sorting and cutting based on certain concentration thresholds but also benefit consumers to make the most appropriate decision when choosing salmon products. The overall results indicated that hyperspectral imaging coupled with chemometrics have potential for the determination and visualization of fat in salmon fillets.
Keywords:near infrared spectroscopy   models   visualization   hyperspectral imaging   fat   salmon   competitive adaptive reweighted sampling
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