研究目的
To use Fourier series expansion to analyze hyperspectral scattering profiles and extract spectral features for improving the prediction accuracy of apple fruit firmness and soluble solids content.
研究成果
The Fourier series expansion method is more effective than the moment method for extracting features from hyperspectral scattering images, leading to improved prediction of apple firmness and SSC. LSSVM models outperformed PLS models in accuracy, and the method is fast and suitable for online applications.
研究不足
The method may be susceptible to noise at higher frequencies; only three Fourier coefficients were used to avoid overfitting; prediction accuracy for SSC was lower than for firmness due to compact distribution range; robustness of LSSVM models was lower than PLS models in some cases.
1:Experimental Design and Method Selection:
The study used Fourier series expansion and moment methods to analyze hyperspectral scattering images. PLS and LSSVM were employed for developing prediction models.
2:Sample Selection and Data Sources:
'Golden Delicious', 'Jonagold', and 'Delicious' apples harvested in 2009 and 2010 from Michigan State University's orchards were used.
3:List of Experimental Equipment and Materials:
An online hyperspectral imaging system (OHIS) with components including an EM-CCD camera, imaging spectrograph, light source, and computer control unit; texture analyzer for firmness measurement; digital refractometer for SSC measurement.
4:Experimental Procedures and Operational Workflow:
Hyperspectral scattering images were acquired, preprocessed by dark subtraction, averaging, and smoothing. Fourier coefficients and Z-FOM spectra were extracted and used to build PLS and LSSVM models with cross-validation.
5:Data Analysis Methods:
Statistical analysis included calculation of correlation coefficients, standard errors, and RPD values; paired t-tests were used for significance testing.
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