Non-destructive detection of kiwifruit soluble solid content based on hyperspectral and fluorescence spectral imaging

The soluble solid content (SSC) is one of the important parameters depicting the quality, maturity and taste of fruits. This study explored hyperspectral imaging (HSI) and fluorescence spectral imaging (FSI) techniques, as well as suitable chemometric techniques to predict the SSC in kiwifruit. 90 k...

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Published inFrontiers in plant science Vol. 13; p. 1075929
Main Authors Xu, Lijia, Chen, Yanjun, Wang, Xiaohui, Chen, Heng, Tang, Zuoliang, Shi, Xiaoshi, Chen, Xinyuan, Wang, Yuchao, Kang, Zhilang, Zou, Zhiyong, Huang, Peng, He, Yong, Yang, Ning, Zhao, Yongpeng
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Media S.A 18.01.2023
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Summary:The soluble solid content (SSC) is one of the important parameters depicting the quality, maturity and taste of fruits. This study explored hyperspectral imaging (HSI) and fluorescence spectral imaging (FSI) techniques, as well as suitable chemometric techniques to predict the SSC in kiwifruit. 90 kiwifruit samples were divided into 70 calibration sets and 20 prediction sets. The hyperspectral images of samples in the spectral range of 387 nm~1034 nm and the fluorescence spectral images in the spectral range of 400 nm~1000 nm were collected, and their regions of interest were extracted. Six spectral pre-processing techniques were used to pre-process the two spectral data, and the best pre-processing method was selected after comparing it with the predicted results. Then, five primary and three secondary feature extraction algorithms were used to extract feature variables from the pre-processed spectral data. Subsequently, three regression prediction models, i.e., the extreme learning machines (ELM), the partial least squares regression (PLSR) and the particle swarm optimization - least square support vector machine (PSO-LSSVM), were established. The prediction results were analyzed and compared further. MASS-Boss-ELM, based on fluorescence spectral imaging technique, exhibited the best prediction performance for the kiwifruit SSC, with the , and RPD of 0.8894, 0.9429 and 2.88, respectively. MASS-Boss-PLSR based on the hyperspectral imaging technique showed a slightly lower prediction performance, with the , , and RPD of 0.8717, 0.8747, and 2.89, respectively. The outcome presents that the two spectral imaging techniques are suitable for the non-destructive prediction of fruit quality. Among them, the FSI technology illustrates better prediction, providing technical support for the non-destructive detection of intrinsic fruit quality.
Bibliography:This article was submitted to Sustainable and Intelligent Phytoprotection, a section of the journal Frontiers in Plant Science
These authors have contributed equally to this work
Reviewed by: Naveen Kumar Mahanti, Dr.Y.S.R. Horticultural University, India; Zhiming Guo, Jiangsu University, China
Edited by: Jianfeng Ping, Zhejiang University, China
ISSN:1664-462X
1664-462X
DOI:10.3389/fpls.2022.1075929