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首页> 外文期刊>Biosystems Engineering >On-line detection of blood spot introduced into brown-shell eggs using visible absorbance spectroscopy
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On-line detection of blood spot introduced into brown-shell eggs using visible absorbance spectroscopy

机译:使用可见吸收光谱在线检测引入棕壳蛋的血斑

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Blood spots in eggs affect their quality, but it is difficult to realise on-line detection of blood spots in brown-shell eggs because the absorption feature of pigment in brown eggshell is similar to that of the blood spot. The major purpose of this study is to explore the optimal discrimination method based on visible absorbance spectroscopy to realise on-line detection. The spectra of 96 brown-shell normal eggs and 98 brown-shell artificial blood-spot eggs were collected in the spectral range of 200-1100 nm by a prototype egg internal quality detection system with a conveyor speed of 4 eggs per second. Three discrimination methods, partial least squares discriminant analysis (PLS-DA), k-nearest neighbour (KNN) and binary logistic regression (BLR) were used and compared. The results showed that the BLR method was better than PLS-DA and KNN, and the best discrimination rates for the training set and prediction set were 95.4% and 96.9%, respectively. In an external validation with 220 eggs, all three real blood-spot eggs were detected and no normal egg was misjudged by the egg internal quality detection system with BLR model. These results indicated that visible absorbance spectroscopy combined with BLR model could be applied as an on-line detection tool for brown-shell blood-spot eggs. (C) 2015 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:鸡蛋中的血斑会影响其质量,但由于棕色蛋壳中色素的吸收特征与血斑相似,因此很难在线检测褐壳蛋中的血斑。本研究的主要目的是探索基于可见吸收光谱的最佳判别方法,以实现在线检测。通过原型鸡蛋内部质量检测系统,以每秒4个鸡蛋的传送速度,在200-1100 nm的光谱范围内收集了96个棕褐色正常蛋和98个棕褐色人造血斑蛋的光​​谱。比较了三种鉴别方法:偏最小二乘判别分析(PLS-DA),k最近邻法(KNN)和二元逻辑回归(BLR)。结果表明,BLR方法优于PLS-DA和KNN,训练集和预测集的最佳判别率分别为95.4%和96.9%。在对220个卵的外部验证中,使用BLR模型的卵内部质量检测系统检测到所有三个真正的血斑卵,并且没有误判正常卵。这些结果表明,可见吸收光谱结合BLR模型可以作为褐壳血斑蛋的在线检测工具。 (C)2015年。由Elsevier Ltd.出版。保留所有权利。

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