光谱学与光谱分析 |
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The Detection of Hatching Eggs Prior to Incubation by the Near Infrared Spectrum |
ZHU Zhi-hui1, 2, WANG Qiao-hua1, 2, WANG Shu-cai2, DAI Ming-yu2, MA Mei-hu1* |
1. National R&D Center for Egg Processing, College of Food Science and Technology, Huazhong Agricultural University, Wuhan 430070, China 2. College of Engineering, Huazhong Agricultural University, Wuhan 430070, China |
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Abstract The detection of the infertile eggs and fertile eggs by the near infrared diffuse reflectance spectra was proposed. Models based on different band regions range, different principal component numbers and the different spectral pre-processing methods were compared and the optimal calibration model was established. The results show that qualitative forecasting model of hatching eggs is established by Mahalanobis Distance, which is with band regions range being 4 119.20~9 881.46 cm-1, principal component number being 19 and spectral pre-processing method being SNV+first derivative+Norris differential filter. The precision rate of calibration set is 92.5% and that of validation set is 91.67%. The study provides a new way for nondestructive testing of the fertile eggs and infertile eggs prior to incubation.
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Received: 2011-08-16
Accepted: 2011-11-22
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Corresponding Authors:
MA Mei-hu
E-mail: mameihuhn@yahoo.com.cn
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