WANG Cai-xai, HE Zhi-wu, WU Long-guo etc. Multi-bands Recognition of Beef Breeds with Hyperspectral Technology Combined with Characteristic Wavelengths Selection Methods[J]. Chinese Journal of Luminescence, 2019,40(4): 520-527
WANG Cai-xai, HE Zhi-wu, WU Long-guo etc. Multi-bands Recognition of Beef Breeds with Hyperspectral Technology Combined with Characteristic Wavelengths Selection Methods[J]. Chinese Journal of Luminescence, 2019,40(4): 520-527 DOI: 10.3788/fgxb20194004.0520.
Multi-bands Recognition of Beef Breeds with Hyperspectral Technology Combined with Characteristic Wavelengths Selection Methods
This paper focused on the research on identifying and classifying for beef varieties of Angus
Limousin and Simmental
by using visible/near-infrared(400~1 000 nm) and near infrared(900~1 700 nm) hyperspectral technologies combined with different characteristic wavelengths selection methods. Meanwhile
the contents of color
tenderness
pH value
moisture
fat and protein were measared. Pretreatment methods were used to process original spectrum respectively according to the characteristics of different spectrum bands; the characteristic wavelengths were extracted by using SPA
IRF and IRF-SPA; then PLS-DA model was applied to identify the different beef varieties under characteristic wavelengths and fullwave bands. Results showed that SNV-IRF-SPA-PLS-DA models achieved the optimal performance in 400~1 000 nm
and the accuracy of the correction set and prediction set was 98.56% and 97.12%
respectively. SG-SPA-PLS-DA models achieved the optimal performance in 900~1 700 nm
and the accuracy of the correction set and prediction set was 94.09% and 96.04%
respectively. There were good effects for beef varieties identification in different hyperspectral bands. The identification accuracy in 400~1 000 nm bands was better than in 900~1 700 nm bands
which explained that the differences of color and texture were more significant than the component contents among the 3 varieties beef. The research indicated that combined hyperspectral technologies with characteristic wavelengths selection methods can obtain a better recognition effect of beef varieties.
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references
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