Nondestructive Estimation of the Chlorophyll b of Apple Fruit by Color and Spectral Features Using Different Methods of Hybrid Artificial Neural Network

Nondestructive estimation of the various physicochemical features of food such as fruits and vegetables will create a dramatic development in the food industry. The reason for this development is that the estimation is non-destructive, online, and most importantly fast. Regarding the advantages, var...

Full description

Bibliographic Details
Main Authors: Yousef Abbaspour-Gilandeh, Sajad Sabzi, Mario Hernández-Hernández, Jose Luis Hernández-Hernández, Farzad Azadshahraki
Format: Article
Language:English
Published: MDPI AG 2019-11-01
Series:Agronomy
Subjects:
Online Access:https://www.mdpi.com/2073-4395/9/11/735
id doaj-77aaa06170ee430bb26154372b9414a6
record_format Article
spelling doaj-77aaa06170ee430bb26154372b9414a62021-04-02T05:53:20ZengMDPI AGAgronomy2073-43952019-11-0191173510.3390/agronomy9110735agronomy9110735Nondestructive Estimation of the Chlorophyll b of Apple Fruit by Color and Spectral Features Using Different Methods of Hybrid Artificial Neural NetworkYousef Abbaspour-Gilandeh0Sajad Sabzi1Mario Hernández-Hernández2Jose Luis Hernández-Hernández3Farzad Azadshahraki4Department of Biosystems Engineering, College of Agriculture, University of Mohaghegh Ardabili, 56199-11367 Ardabil, IranDepartment of Biosystems Engineering, College of Agriculture, University of Mohaghegh Ardabili, 56199-11367 Ardabil, IranFaculty of Engineering, Autonomous University of Guerrero, Chilpancingo 39070, MexicoDivision of Research and Graduate Studies, TecNM/Technological Institute of Chilpancingo, Chilpancingo 39070, MexicoAgricultural Engineering Research Institute, Agricultural Research, Education and Extension Organization (AREEO), 31585-845 Karaj, IranNondestructive estimation of the various physicochemical features of food such as fruits and vegetables will create a dramatic development in the food industry. The reason for this development is that the estimation is non-destructive, online, and most importantly fast. Regarding the advantages, various researchers have focused on how to undertake non-destructive estimation of the physicochemical features of various nutrients. Three main goals were pursued in this article. These are: 1. Nondestructive estimation of the chlorophyll b content of red delicious apple using color features and hybrid artificial neural network-cultural algorithm (ANN-CA), 2. Nondestructive estimation of chlorophyll b content of red delicious apple using spectral data (around a range of 680 nm) and hybrid Artificial Neural Network-biogeography-based algorithm (ANN-BBO), 3. Nondestructive estimation of the chlorophyll b content of red delicious apple using different groups of selective spectra by the hybrid artificial neural network-differential evolution algorithm (ANN-DA). In each of these methods, 1000 replications were performed to evaluate the reliability of various hybrids of the artificial neural network. Finally, the results indicated that the average determination coefficient in 1000 replications for the hybrid artificial neural network, the cultural algorithm, and the hybrid artificial neural network, the biogeography-based optimization algorithm, was 0.882 and 0.932, respectively. Also, the results showed that the highest value of the coefficient of determination among the different groups of effective features is related to the group of features with 10 spectra. The coefficient of determination in this case was 0.93.https://www.mdpi.com/2073-4395/9/11/735non-destructivecolor featuresspectral dataeffective spectravisible light/near-infraredhybrid artificial neural network.
collection DOAJ
language English
format Article
sources DOAJ
author Yousef Abbaspour-Gilandeh
Sajad Sabzi
Mario Hernández-Hernández
Jose Luis Hernández-Hernández
Farzad Azadshahraki
spellingShingle Yousef Abbaspour-Gilandeh
Sajad Sabzi
Mario Hernández-Hernández
Jose Luis Hernández-Hernández
Farzad Azadshahraki
Nondestructive Estimation of the Chlorophyll b of Apple Fruit by Color and Spectral Features Using Different Methods of Hybrid Artificial Neural Network
Agronomy
non-destructive
color features
spectral data
effective spectra
visible light/near-infrared
hybrid artificial neural network.
author_facet Yousef Abbaspour-Gilandeh
Sajad Sabzi
Mario Hernández-Hernández
Jose Luis Hernández-Hernández
Farzad Azadshahraki
author_sort Yousef Abbaspour-Gilandeh
title Nondestructive Estimation of the Chlorophyll b of Apple Fruit by Color and Spectral Features Using Different Methods of Hybrid Artificial Neural Network
title_short Nondestructive Estimation of the Chlorophyll b of Apple Fruit by Color and Spectral Features Using Different Methods of Hybrid Artificial Neural Network
title_full Nondestructive Estimation of the Chlorophyll b of Apple Fruit by Color and Spectral Features Using Different Methods of Hybrid Artificial Neural Network
title_fullStr Nondestructive Estimation of the Chlorophyll b of Apple Fruit by Color and Spectral Features Using Different Methods of Hybrid Artificial Neural Network
title_full_unstemmed Nondestructive Estimation of the Chlorophyll b of Apple Fruit by Color and Spectral Features Using Different Methods of Hybrid Artificial Neural Network
title_sort nondestructive estimation of the chlorophyll b of apple fruit by color and spectral features using different methods of hybrid artificial neural network
publisher MDPI AG
series Agronomy
issn 2073-4395
publishDate 2019-11-01
description Nondestructive estimation of the various physicochemical features of food such as fruits and vegetables will create a dramatic development in the food industry. The reason for this development is that the estimation is non-destructive, online, and most importantly fast. Regarding the advantages, various researchers have focused on how to undertake non-destructive estimation of the physicochemical features of various nutrients. Three main goals were pursued in this article. These are: 1. Nondestructive estimation of the chlorophyll b content of red delicious apple using color features and hybrid artificial neural network-cultural algorithm (ANN-CA), 2. Nondestructive estimation of chlorophyll b content of red delicious apple using spectral data (around a range of 680 nm) and hybrid Artificial Neural Network-biogeography-based algorithm (ANN-BBO), 3. Nondestructive estimation of the chlorophyll b content of red delicious apple using different groups of selective spectra by the hybrid artificial neural network-differential evolution algorithm (ANN-DA). In each of these methods, 1000 replications were performed to evaluate the reliability of various hybrids of the artificial neural network. Finally, the results indicated that the average determination coefficient in 1000 replications for the hybrid artificial neural network, the cultural algorithm, and the hybrid artificial neural network, the biogeography-based optimization algorithm, was 0.882 and 0.932, respectively. Also, the results showed that the highest value of the coefficient of determination among the different groups of effective features is related to the group of features with 10 spectra. The coefficient of determination in this case was 0.93.
topic non-destructive
color features
spectral data
effective spectra
visible light/near-infrared
hybrid artificial neural network.
url https://www.mdpi.com/2073-4395/9/11/735
work_keys_str_mv AT yousefabbaspourgilandeh nondestructiveestimationofthechlorophyllbofapplefruitbycolorandspectralfeaturesusingdifferentmethodsofhybridartificialneuralnetwork
AT sajadsabzi nondestructiveestimationofthechlorophyllbofapplefruitbycolorandspectralfeaturesusingdifferentmethodsofhybridartificialneuralnetwork
AT mariohernandezhernandez nondestructiveestimationofthechlorophyllbofapplefruitbycolorandspectralfeaturesusingdifferentmethodsofhybridartificialneuralnetwork
AT joseluishernandezhernandez nondestructiveestimationofthechlorophyllbofapplefruitbycolorandspectralfeaturesusingdifferentmethodsofhybridartificialneuralnetwork
AT farzadazadshahraki nondestructiveestimationofthechlorophyllbofapplefruitbycolorandspectralfeaturesusingdifferentmethodsofhybridartificialneuralnetwork
_version_ 1724172197617991680