Spectral reconstruction from RGB image to hyperspectral image: Take the detection of glutamic acid index in beef as an example

The use of spectral reconstruction (SR) to recovery RGB images to full-scene hyperspectral image (HSI) is an important measure to achieve real-time and low-cost HSI applications. Taking the detection of glutamic acid index for 360 beef samples as an example, the feasibility of using 11 state-of-the-...

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Veröffentlicht in:Food chemistry 2025-01, Vol.463 (Pt 4), p.141543, Article 141543
Hauptverfasser: Dong, Fujia, Xu, Ying, Shi, Yingkun, Feng, Yingjie, Ma, Zhaoyang, Li, Hui, Zhang, Zhongxiong, Wang, Guangxian, Chen, Yue, Xian, Jinhua, Wang, Shichang, Wang, Songlei, Yi, Weiguo
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Sprache:eng
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Zusammenfassung:The use of spectral reconstruction (SR) to recovery RGB images to full-scene hyperspectral image (HSI) is an important measure to achieve real-time and low-cost HSI applications. Taking the detection of glutamic acid index for 360 beef samples as an example, the feasibility of using 11 state-of-the-art reconstruction algorithms to achieve RGB to HSI in complex food systems was investigated. The multivariate correlation analysis was used to prove that RGB is a projection of three-channel comprehensive coverage wide-band information. The comprehensive quality attributes (PSNR-Params-FLOPS) was proposed to determine the optimal reconstruction model (MST++, MST, MIRNet, and MPRNet). Moreover, SSIM values and t-SNE were introduced to evaluate the consistency of the reconstruction results. Finally, Lightweight Transformer was used to establish the detection models of Raw-HSI, RGB and SR-HSI for the prediction of glutamic acid index for beef. The results showed that the MST++ model exhibited the best performance in SR, with RMSE, PSNR, and SSIM values of 0.015, 36.70, and 0.9253, respectively. Meanwhile, the prediction effect of MST++ (R2P = 0.8422 and RPD = 2.46) reconstructed was close to the Raw-HSI (R2P = 0.8526 and RPD = 2.69). The results provide practical application scenarios and detailed analysis ideas for RGB-to-HSI. [Display omitted] •Reconstructed consistency analysis (SSIM and t-SNE) provides the feasibility of RGB-to-HSI.•Eleven state-of-the-art reconstruction algorithms were evaluated and analyzed.•A Lightweight Transformer quantitative model was proposed.•MST++ reconstruction model predicted results close to the RAW-HSI.
ISSN:0308-8146
1873-7072
1873-7072
DOI:10.1016/j.foodchem.2024.141543