Ssc and Ph Prediction and Maturity Classification of Grapes Based on Hyperspectral Imaging

31 Pages Posted: 14 Apr 2023

See all articles by Sheng Gao

Sheng Gao

Qingdao University of Technology

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Abstract

Soluble solids content (SSC) and pH of red globe grapes are crucial measures of quality. In this paper, we used hyperspectral imaging technology to achieve nondestructive detection and distribution visualization of SSC and pH of red globe grapes. First, the hyperspectral images of samples were collected. Then, CARS, SPA, GA, IRIV were used to extract feature variables from raw spectral (RAW) information. The PLSR prediction models of samples were developed. By comparing the different prediction models, RAW-IRIV-PLSR was selected as the optimal model. Finally, the SSC and pH of the samples were calculated to obtain a grayscale image and perform a pseudo-color transformation to visualize the distribution of SSC and pH. By studying the classification of the maturity of samples, it was concluded that the best discriminant classification model of maturity was RAW-IRIV-ELM. Hyperspectral also provided a new method for maturity stage classification of red globe grapes.

Keywords: Red globe grapes, SSC, Visualization, hyperspectral imaging, Maturity stage

Suggested Citation

Gao, Sheng, Ssc and Ph Prediction and Maturity Classification of Grapes Based on Hyperspectral Imaging. Available at SSRN: https://ssrn.com/abstract=4418698 or http://dx.doi.org/10.2139/ssrn.4418698

Sheng Gao (Contact Author)

Qingdao University of Technology ( email )

Qingdao, 266033
China

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