Machine vision system combined with multiple regression for damage and quality detection of bananas during storage

The study used a machine vision system and applied image process analysis to assess the bruise parameters of the damage zone and external quality attributes of 18 treatments generated from bruised (30 cm and 60 cm drop heights) and non-bruised (control) ‘Fard’ and ‘Somali’ banana cultivars stored at...

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Main Authors: Mai Al-Dairi, Pankaj B. Pathare, Rashid Al-Yahyai, Nasser Al-Habsi, Hemanatha Jayasuriya, Zahir Al-Attabi
Format: Article
Language:English
Published: Elsevier 2024-12-01
Series:Applied Food Research
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Online Access:http://www.sciencedirect.com/science/article/pii/S2772502224002518
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author Mai Al-Dairi
Pankaj B. Pathare
Rashid Al-Yahyai
Nasser Al-Habsi
Hemanatha Jayasuriya
Zahir Al-Attabi
author_facet Mai Al-Dairi
Pankaj B. Pathare
Rashid Al-Yahyai
Nasser Al-Habsi
Hemanatha Jayasuriya
Zahir Al-Attabi
author_sort Mai Al-Dairi
collection DOAJ
description The study used a machine vision system and applied image process analysis to assess the bruise parameters of the damage zone and external quality attributes of 18 treatments generated from bruised (30 cm and 60 cm drop heights) and non-bruised (control) ‘Fard’ and ‘Somali’ banana cultivars stored at 5, 13, and 22 °C for 21 d Experiments include digital image analysis of fractal dimension (FD), grayscale (Igray), bruise susceptibility (BS), color, surface area (AS), and some other physical attributes like weight loss %, peel thickness reduction %, and firmness. Multiple linear regression analysis was programmed to determine the effect of the four predictors (storage time, temperature, impact level, and cultivars) on the dependent variables (bruise intensity and quality parameters). It was demonstrated that the fractal dimension of the bruised area increased as impact damage and storage duration increased, particularly in high impact (60 cm) ‘Fard’ banana fruit at 5 and 22 °C, respectively. Digital image analysis was effectively used to determine the surface area of both cultivars. The model explains 83 % of the variability in digital image surface area compared to 70 % for manually measured surface area. The predicted versus measured L*a*b* color spaces showed a higher determination of coefficient (R2 > 0.5300) compared to a lower determination of coefficient (R2<0.3900) for RGB color spaces. The L*a*b* color spaces recorded a strong correlation with all digitally processed parameters, peel thickness, firmness, and weight loss %, which had greater reliability than RGB color space to predict subsequent bruise damage and storage quality change in bananas. Using image analysis by machine vision system aligning with multiple linear regression has been approved to be efficient for external quality and bruise intensity determination in banana cultivars.
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spelling doaj-art-2f81ec1ef7584b0aaca52a7bd2683fbf2025-08-20T02:49:44ZengElsevierApplied Food Research2772-50222024-12-014210064110.1016/j.afres.2024.100641Machine vision system combined with multiple regression for damage and quality detection of bananas during storageMai Al-Dairi0Pankaj B. Pathare1Rashid Al-Yahyai2Nasser Al-Habsi3Hemanatha Jayasuriya4Zahir Al-Attabi5Department of Soils, Water and Agricultural Engineering, College of Agricultural &amp; Marine Sciences, Sultan Qaboos University, OmanDepartment of Soils, Water and Agricultural Engineering, College of Agricultural &amp; Marine Sciences, Sultan Qaboos University, Oman; Corresponding author.Department of Plant Sciences, College of Agricultural &amp; Marine Sciences, Sultan Qaboos University, OmanDepartment of Food Sciences and Nutrition, College of Agricultural &amp; Marine Sciences, Sultan Qaboos University, OmanDepartment of Soils, Water and Agricultural Engineering, College of Agricultural &amp; Marine Sciences, Sultan Qaboos University, OmanDepartment of Food Sciences and Nutrition, College of Agricultural &amp; Marine Sciences, Sultan Qaboos University, OmanThe study used a machine vision system and applied image process analysis to assess the bruise parameters of the damage zone and external quality attributes of 18 treatments generated from bruised (30 cm and 60 cm drop heights) and non-bruised (control) ‘Fard’ and ‘Somali’ banana cultivars stored at 5, 13, and 22 °C for 21 d Experiments include digital image analysis of fractal dimension (FD), grayscale (Igray), bruise susceptibility (BS), color, surface area (AS), and some other physical attributes like weight loss %, peel thickness reduction %, and firmness. Multiple linear regression analysis was programmed to determine the effect of the four predictors (storage time, temperature, impact level, and cultivars) on the dependent variables (bruise intensity and quality parameters). It was demonstrated that the fractal dimension of the bruised area increased as impact damage and storage duration increased, particularly in high impact (60 cm) ‘Fard’ banana fruit at 5 and 22 °C, respectively. Digital image analysis was effectively used to determine the surface area of both cultivars. The model explains 83 % of the variability in digital image surface area compared to 70 % for manually measured surface area. The predicted versus measured L*a*b* color spaces showed a higher determination of coefficient (R2 > 0.5300) compared to a lower determination of coefficient (R2<0.3900) for RGB color spaces. The L*a*b* color spaces recorded a strong correlation with all digitally processed parameters, peel thickness, firmness, and weight loss %, which had greater reliability than RGB color space to predict subsequent bruise damage and storage quality change in bananas. Using image analysis by machine vision system aligning with multiple linear regression has been approved to be efficient for external quality and bruise intensity determination in banana cultivars.http://www.sciencedirect.com/science/article/pii/S2772502224002518BananaMachine visionImage analysisSurface areaFractal dimension
spellingShingle Mai Al-Dairi
Pankaj B. Pathare
Rashid Al-Yahyai
Nasser Al-Habsi
Hemanatha Jayasuriya
Zahir Al-Attabi
Machine vision system combined with multiple regression for damage and quality detection of bananas during storage
Applied Food Research
Banana
Machine vision
Image analysis
Surface area
Fractal dimension
title Machine vision system combined with multiple regression for damage and quality detection of bananas during storage
title_full Machine vision system combined with multiple regression for damage and quality detection of bananas during storage
title_fullStr Machine vision system combined with multiple regression for damage and quality detection of bananas during storage
title_full_unstemmed Machine vision system combined with multiple regression for damage and quality detection of bananas during storage
title_short Machine vision system combined with multiple regression for damage and quality detection of bananas during storage
title_sort machine vision system combined with multiple regression for damage and quality detection of bananas during storage
topic Banana
Machine vision
Image analysis
Surface area
Fractal dimension
url http://www.sciencedirect.com/science/article/pii/S2772502224002518
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AT rashidalyahyai machinevisionsystemcombinedwithmultipleregressionfordamageandqualitydetectionofbananasduringstorage
AT nasseralhabsi machinevisionsystemcombinedwithmultipleregressionfordamageandqualitydetectionofbananasduringstorage
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