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Vision-Based Edge Detection System for Fruit Recognition

Authors :
M. S. Muhamad Azmi
A.H. Ismail
Goh Kheng Sneah
Sean Huey Tan
Chee Kiang Lam
Ong Thean Lye
Norasmadi Abdul Rahim
Teoh Phaik Hai
Moey Lip Seng
Kamarulzaman Kamarudin
Wan Mohd Nooriman Wan Yahya
Source :
Journal of Physics: Conference Series. 2107:012066
Publication Year :
2021
Publisher :
IOP Publishing, 2021.

Abstract

There are variety of fruits around the world, different types of fruits contain different types of nutrients and vitamins which could benefits our health. In order to understand which fruit can provide specific type of nutrients, we need to identify the types of fruits. However, fruits grow in a different shape, colour and texture based on the country they were planted and the environment of the land. Implementing a machine vision-based recognition on the fruits can help people recognize them easily. In this paper, an edge detection method is applied using computer vision approach to recognize different types of fruits. The fruits are classified based on the features extracted from their images. In the experiment, a total of 450 images of three types of fruit are used, which are apples, lemons and mangoes. Pre-processing steps are applied on the captured image to improve the quality of fruit details and the edge features are extracted using Canny Edge Detection method. Classification of the fruits is accomplished using two different types of learning model, the deep leaning model, Convolution Neural Network (CNN) and machine learning model, Support Vector Machines (SVM). The performance of both classifiers is compared and the model with the best performance, SVM is chosen as the model for the system. The system can achieve 86% classification accuracy with the SVM model, which is good enough for fruit recognition.

Details

ISSN :
17426596 and 17426588
Volume :
2107
Database :
OpenAIRE
Journal :
Journal of Physics: Conference Series
Accession number :
edsair.doi...........538c4df3a838755d2603524111752b7a
Full Text :
https://doi.org/10.1088/1742-6596/2107/1/012066