Pre-dispersive near-infrared light sensing in non-destructively classifying the brix of intact pineapples

Exported fresh intact pineapples must fulfill the minimum internal quality requirement of 12 degree brix. Even though near-infrared (NIR) spectroscopic approaches are promising to non-destructively and rapidly assess the internal quality of intact pineapples, these approaches involve expensive and c...

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Published in:Journal of Food Science and Technology
Main Author: Chia K.S.; Jam M.N.H.; Gan Z.; Ismail N.
Format: Article
Language:English
Published: Springer 2020
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85084514346&doi=10.1007%2fs13197-020-04492-5&partnerID=40&md5=0a975dcc5f8806285ee3bbc484a731d5
id 2-s2.0-85084514346
spelling 2-s2.0-85084514346
Chia K.S.; Jam M.N.H.; Gan Z.; Ismail N.
Pre-dispersive near-infrared light sensing in non-destructively classifying the brix of intact pineapples
2020
Journal of Food Science and Technology
57
12
10.1007/s13197-020-04492-5
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85084514346&doi=10.1007%2fs13197-020-04492-5&partnerID=40&md5=0a975dcc5f8806285ee3bbc484a731d5
Exported fresh intact pineapples must fulfill the minimum internal quality requirement of 12 degree brix. Even though near-infrared (NIR) spectroscopic approaches are promising to non-destructively and rapidly assess the internal quality of intact pineapples, these approaches involve expensive and complex NIR spectroscopic instrumentation. Thus, this research evaluates the performance of a proposed pre-dispersive NIR light sensing approach in non-destructively classifying the Brix of pineapples using K-fold cross-validation, holdout validation, and sensitive analysis. First, the proposed pre-dispersive NIR sensing device that consisted of a light sensing element and five NIR light emitting diodes with peak wavelengths of 780, 850, 870, 910, and 940 nm, respectively, was developed. After that, the diffuse reflectance NIR light of intact pineapples was non-destructively acquired using the developed NIR sensing device before their Brix values were conventionally measured using a digital refractometer. Next, an artificial neural network (ANN) was trained and optimized to classify the Brix values of pineapples using the acquired NIR light. The results of the sensitivity analysis showed that either one wavelength that was near to the water absorbance or chlorophyll band was redundant in the classification. The performance of the trained ANN was tested using new pineapples with the optimal classification accuracy of 80.56%. This indicates that the proposed pre-dispersive NIR light sensing approach coupled with the ANN is promising to be an alternative to non-destructively classifying the internal quality of fruits. © 2020, Association of Food Scientists & Technologists (India).
Springer
221155
English
Article
All Open Access; Green Open Access
author Chia K.S.; Jam M.N.H.; Gan Z.; Ismail N.
spellingShingle Chia K.S.; Jam M.N.H.; Gan Z.; Ismail N.
Pre-dispersive near-infrared light sensing in non-destructively classifying the brix of intact pineapples
author_facet Chia K.S.; Jam M.N.H.; Gan Z.; Ismail N.
author_sort Chia K.S.; Jam M.N.H.; Gan Z.; Ismail N.
title Pre-dispersive near-infrared light sensing in non-destructively classifying the brix of intact pineapples
title_short Pre-dispersive near-infrared light sensing in non-destructively classifying the brix of intact pineapples
title_full Pre-dispersive near-infrared light sensing in non-destructively classifying the brix of intact pineapples
title_fullStr Pre-dispersive near-infrared light sensing in non-destructively classifying the brix of intact pineapples
title_full_unstemmed Pre-dispersive near-infrared light sensing in non-destructively classifying the brix of intact pineapples
title_sort Pre-dispersive near-infrared light sensing in non-destructively classifying the brix of intact pineapples
publishDate 2020
container_title Journal of Food Science and Technology
container_volume 57
container_issue 12
doi_str_mv 10.1007/s13197-020-04492-5
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85084514346&doi=10.1007%2fs13197-020-04492-5&partnerID=40&md5=0a975dcc5f8806285ee3bbc484a731d5
description Exported fresh intact pineapples must fulfill the minimum internal quality requirement of 12 degree brix. Even though near-infrared (NIR) spectroscopic approaches are promising to non-destructively and rapidly assess the internal quality of intact pineapples, these approaches involve expensive and complex NIR spectroscopic instrumentation. Thus, this research evaluates the performance of a proposed pre-dispersive NIR light sensing approach in non-destructively classifying the Brix of pineapples using K-fold cross-validation, holdout validation, and sensitive analysis. First, the proposed pre-dispersive NIR sensing device that consisted of a light sensing element and five NIR light emitting diodes with peak wavelengths of 780, 850, 870, 910, and 940 nm, respectively, was developed. After that, the diffuse reflectance NIR light of intact pineapples was non-destructively acquired using the developed NIR sensing device before their Brix values were conventionally measured using a digital refractometer. Next, an artificial neural network (ANN) was trained and optimized to classify the Brix values of pineapples using the acquired NIR light. The results of the sensitivity analysis showed that either one wavelength that was near to the water absorbance or chlorophyll band was redundant in the classification. The performance of the trained ANN was tested using new pineapples with the optimal classification accuracy of 80.56%. This indicates that the proposed pre-dispersive NIR light sensing approach coupled with the ANN is promising to be an alternative to non-destructively classifying the internal quality of fruits. © 2020, Association of Food Scientists & Technologists (India).
publisher Springer
issn 221155
language English
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accesstype All Open Access; Green Open Access
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