| Literature DB >> 30785888 |
Baohua Yang1,2,3,4, Yuan Gao1, Hongmin Li4, Shengbo Ye1, Hongxia He1, Shenru Xie1.
Abstract
Free amino acids are an important indicator of the freshness of yellow tea. This study investigated a novel procedure for predicting the free amino acid (FAA) concentration of yellow tea. It was developed based on the combined spectral and textural features from hyperspectral images. For the purposes of exploration and comparison, hyperspectral images of yellow tea (150 samples) were captured and analyzed. The raw spectra were preprocessed with Savitzky-Golay (SG) smoothing. To reduce the dimension of spectral data, five feature wavelengths were extracted using the successive projections algorithm (SPA). Five textural features (angular second moment, entropy, contrast, correlation, and homogeneity) were extracted as textural variables from the characteristic grayscale images of the five characteristic wavelengths using the gray-level co-occurrence matrix (GLCM). The FAA content prediction model with different variables was established by a genetic algorithm-support vector regression (GA-SVR) algorithm. The results showed that better prediction results were obtained by combining the feature wavelengths and textural variables. Compared with other data, this prediction result was still very satisfactory in the GA-SVR model, indicating that data fusion was an effective way to enhance hyperspectral imaging ability for the determination of free amino acid values in yellow tea.Entities:
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Year: 2019 PMID: 30785888 PMCID: PMC6382264 DOI: 10.1371/journal.pone.0210084
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Flowchart of main data-processing procedures to predict FAA with hyperspectral images.
Fig 2The hyperspectral imaging system.
1 dark room; 2 CCD camera; 3 imaging spectrograph; 4 lens; 5 light source; 6 Sample stage; 7 mobile platform; 8 mobile platform controller; 9 fiber; 10 light source controller; 11 computer.
Fig 3Full spectrum of yellow tea preprocessed by SG smoothing filter.
Fig 4The selected feature wavelengths after SPA algorithm.
Performance of GA-SVR models based on different data for prediction of FAA.
| Modeling data | Variables | Calibration set | Prediction set | ||
|---|---|---|---|---|---|
| R2c | RMSEC (%) | R2p | RMSEP (%) | ||
| Full Wavelengths | 457 | 0.84 | 15.09 | 0.69 | 18.81 |
| Feature Wavelengths | 5 | 0.82 | 15.91 | 0.74 | 17.25 |
| Texture variables | 100 | 0.99 | 0.83 | 0.81 | 14.71 |
| Data fusion | 105 | 0.99 | 0.78 | 0.87 | 12.02 |
Fig 5GA-SVR model between measured and predicted free amino acids based on fusion of different data.