Food Quality Inspection and Grading Using Efficient Image Segmentation and Machine Learning-Based System

One of the most critical aspects of quality assurance is inspecting products for defects before they are sold or shipped. A good product is more vital than having more of the same item for a customer’s enjoyment. The client has a significant role in determining the quality of a product. Another way...

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Main Authors: V. Hemamalini, S. Rajarajeswari, S. Nachiyappan, M. Sambath, T. Devi, Bhupesh Kumar Singh, Abhishek Raghuvanshi
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Journal of Food Quality
Online Access:http://dx.doi.org/10.1155/2022/5262294
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author V. Hemamalini
S. Rajarajeswari
S. Nachiyappan
M. Sambath
T. Devi
Bhupesh Kumar Singh
Abhishek Raghuvanshi
author_facet V. Hemamalini
S. Rajarajeswari
S. Nachiyappan
M. Sambath
T. Devi
Bhupesh Kumar Singh
Abhishek Raghuvanshi
author_sort V. Hemamalini
collection DOAJ
description One of the most critical aspects of quality assurance is inspecting products for defects before they are sold or shipped. A good product is more vital than having more of the same item for a customer’s enjoyment. The client has a significant role in determining the quality of a product. Another way to think about quality is as the total of all the characteristics that contribute to the creation of items that the client enjoys. Recently, the application of machine vision and image processing technology to improve the surface quality of fruits and other foods has increased significantly. This is primarily because these technologies make significant advancements in areas where the human eye falls short. This means that, by utilizing computer vision and image processing techniques, time-consuming and subjective industrial quality control processes can be eliminated. This article discusses how to check and assess food using picture segmentation and machine learning. It is capable of classifying fruits and determining whether a piece of fruit is rotten. To begin, Gaussian elimination is used to remove noise from images. Then, photos are subjected to histogram equalization in order to improve their quality. Segmentation of the image is carried out using the K-means clustering technique. Then, fruit photos are classified using machine learning methods such as KNN, SVM, and C4.5. These algorithms determine if a fruit is damaged or not.
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institution Kabale University
issn 1745-4557
language English
publishDate 2022-01-01
publisher Wiley
record_format Article
series Journal of Food Quality
spelling doaj-art-ad90ad339d924f54b5eb40cde9a8269f2025-02-03T01:07:11ZengWileyJournal of Food Quality1745-45572022-01-01202210.1155/2022/5262294Food Quality Inspection and Grading Using Efficient Image Segmentation and Machine Learning-Based SystemV. Hemamalini0S. Rajarajeswari1S. Nachiyappan2M. Sambath3T. Devi4Bhupesh Kumar Singh5Abhishek Raghuvanshi6School of ComputingSchool of Computer Science and EngineeringSchool of Computer Science and EngineeringSchool of Computer Science and EngineeringDepartment of Computer Science & EngineeringArba Minch UniversityMahakal Institute of TechnologyOne of the most critical aspects of quality assurance is inspecting products for defects before they are sold or shipped. A good product is more vital than having more of the same item for a customer’s enjoyment. The client has a significant role in determining the quality of a product. Another way to think about quality is as the total of all the characteristics that contribute to the creation of items that the client enjoys. Recently, the application of machine vision and image processing technology to improve the surface quality of fruits and other foods has increased significantly. This is primarily because these technologies make significant advancements in areas where the human eye falls short. This means that, by utilizing computer vision and image processing techniques, time-consuming and subjective industrial quality control processes can be eliminated. This article discusses how to check and assess food using picture segmentation and machine learning. It is capable of classifying fruits and determining whether a piece of fruit is rotten. To begin, Gaussian elimination is used to remove noise from images. Then, photos are subjected to histogram equalization in order to improve their quality. Segmentation of the image is carried out using the K-means clustering technique. Then, fruit photos are classified using machine learning methods such as KNN, SVM, and C4.5. These algorithms determine if a fruit is damaged or not.http://dx.doi.org/10.1155/2022/5262294
spellingShingle V. Hemamalini
S. Rajarajeswari
S. Nachiyappan
M. Sambath
T. Devi
Bhupesh Kumar Singh
Abhishek Raghuvanshi
Food Quality Inspection and Grading Using Efficient Image Segmentation and Machine Learning-Based System
Journal of Food Quality
title Food Quality Inspection and Grading Using Efficient Image Segmentation and Machine Learning-Based System
title_full Food Quality Inspection and Grading Using Efficient Image Segmentation and Machine Learning-Based System
title_fullStr Food Quality Inspection and Grading Using Efficient Image Segmentation and Machine Learning-Based System
title_full_unstemmed Food Quality Inspection and Grading Using Efficient Image Segmentation and Machine Learning-Based System
title_short Food Quality Inspection and Grading Using Efficient Image Segmentation and Machine Learning-Based System
title_sort food quality inspection and grading using efficient image segmentation and machine learning based system
url http://dx.doi.org/10.1155/2022/5262294
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