Identification of Damage in Pear Using Hyperspectral Imaging Technology

Crown pears are an important economic crop, but their quality and economy are seriously affected by the different levels of damage. To improve the overall quality of crown pears, sorting of crown pears with different levels of damage is required. However, there are some shortcomings in the tradition...

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Main Authors: Cheng-Tao Su, Bin Li, Hai Yin, Ji-Ping Zou, Feng Zhang, Yan-De Liu
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Journal of Spectroscopy
Online Access:http://dx.doi.org/10.1155/2022/9094249
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author Cheng-Tao Su
Bin Li
Hai Yin
Ji-Ping Zou
Feng Zhang
Yan-De Liu
author_facet Cheng-Tao Su
Bin Li
Hai Yin
Ji-Ping Zou
Feng Zhang
Yan-De Liu
author_sort Cheng-Tao Su
collection DOAJ
description Crown pears are an important economic crop, but their quality and economy are seriously affected by the different levels of damage. To improve the overall quality of crown pears, sorting of crown pears with different levels of damage is required. However, there are some shortcomings in the traditional detection methods, such as low efficiency and large error. Therefore, the hyperspectral technology was used to discriminate between sound and 3 different levels of damage (defined as level I, II, and III damage, respectively) of crown pears in this study. To improve the discriminatory accuracy of the model, absorbance (A) spectra and Kubelka–Munk (K-M) spectra were added to reflectance (R) spectra. The three spectra were pretreated; then, the partial least squares discriminant analysis (PLS-DA) model and the support vector machine (SVM) model were established to discriminate the crown pears with different levels of damage. The results of the discriminant model show that the discrimination accuracy of the SVM based on R, A, and K-M spectra is higher than that of PLS-DA of them; the A-RAW-SVM model has the best discrimination performance with an overall discrimination accuracy of 100% for the test and 98.98% for calibration sets, respectively. Finally, the spectra were selected by the competitive adaptive reweighted sampling (CARS) and the uninformative variables elimination (UVE) to obtain the characteristic wavelengths, and the SVM models were built based on the filtered R, A, and K-M. Their discrimination results show that the A-RAW-CARS-SVM model has the best discrimination ability, and the discrimination accuracies of the test and calibration sets of the model are 96.88% and 100%, respectively. The results show that the best discrimination of different levels of damage of crown pears is the SVM model based on a spectra. This study provides a theoretical basis and experimental basis for detecting the damage of crown pears using hyperspectral.
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spelling doaj.art-11bbd4f52f904144973e3f52244190202025-02-03T01:01:19ZengWileyJournal of Spectroscopy2314-49392022-01-01202210.1155/2022/9094249Identification of Damage in Pear Using Hyperspectral Imaging TechnologyCheng-Tao Su0Bin Li1Hai Yin2Ji-Ping Zou3Feng Zhang4Yan-De Liu5School of Mechatronics EngineeringSchool of Mechatronics EngineeringSchool of Mechatronics EngineeringSchool of Mechatronics EngineeringSchool of Mechatronics EngineeringSchool of Mechatronics EngineeringCrown pears are an important economic crop, but their quality and economy are seriously affected by the different levels of damage. To improve the overall quality of crown pears, sorting of crown pears with different levels of damage is required. However, there are some shortcomings in the traditional detection methods, such as low efficiency and large error. Therefore, the hyperspectral technology was used to discriminate between sound and 3 different levels of damage (defined as level I, II, and III damage, respectively) of crown pears in this study. To improve the discriminatory accuracy of the model, absorbance (A) spectra and Kubelka–Munk (K-M) spectra were added to reflectance (R) spectra. The three spectra were pretreated; then, the partial least squares discriminant analysis (PLS-DA) model and the support vector machine (SVM) model were established to discriminate the crown pears with different levels of damage. The results of the discriminant model show that the discrimination accuracy of the SVM based on R, A, and K-M spectra is higher than that of PLS-DA of them; the A-RAW-SVM model has the best discrimination performance with an overall discrimination accuracy of 100% for the test and 98.98% for calibration sets, respectively. Finally, the spectra were selected by the competitive adaptive reweighted sampling (CARS) and the uninformative variables elimination (UVE) to obtain the characteristic wavelengths, and the SVM models were built based on the filtered R, A, and K-M. Their discrimination results show that the A-RAW-CARS-SVM model has the best discrimination ability, and the discrimination accuracies of the test and calibration sets of the model are 96.88% and 100%, respectively. The results show that the best discrimination of different levels of damage of crown pears is the SVM model based on a spectra. This study provides a theoretical basis and experimental basis for detecting the damage of crown pears using hyperspectral.http://dx.doi.org/10.1155/2022/9094249
spellingShingle Cheng-Tao Su
Bin Li
Hai Yin
Ji-Ping Zou
Feng Zhang
Yan-De Liu
Identification of Damage in Pear Using Hyperspectral Imaging Technology
Journal of Spectroscopy
title Identification of Damage in Pear Using Hyperspectral Imaging Technology
title_full Identification of Damage in Pear Using Hyperspectral Imaging Technology
title_fullStr Identification of Damage in Pear Using Hyperspectral Imaging Technology
title_full_unstemmed Identification of Damage in Pear Using Hyperspectral Imaging Technology
title_short Identification of Damage in Pear Using Hyperspectral Imaging Technology
title_sort identification of damage in pear using hyperspectral imaging technology
url http://dx.doi.org/10.1155/2022/9094249
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