Automatic dry waste classification for recycling purpose

There has been a serious increment in solid waste in the past decades due to rapid urbanization and industrialization. Therefore, it becomes a big issue and challenges which need to have a great concern, as accumulation of solid waste would result in environmental pollution. Recycling is a method wh...

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Main Authors: Baharuddin, Muhammad Nuzul Naim, Mehmood Khan, Hassan, Mokhtar, Norrima, Wan Mahiyiddin, Wan Amirul
Format: Conference or Workshop Item
Published: 2022
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Online Access:http://eprints.utm.my/id/eprint/101441/
https://alife-robotics.co.jp/members2022/icarob/index.html
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Institution: Universiti Teknologi Malaysia
id my.utm.101441
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spelling my.utm.1014412023-06-14T10:25:18Z http://eprints.utm.my/id/eprint/101441/ Automatic dry waste classification for recycling purpose Baharuddin, Muhammad Nuzul Naim Mehmood Khan, Hassan Mokhtar, Norrima Wan Mahiyiddin, Wan Amirul QA75 Electronic computers. Computer science There has been a serious increment in solid waste in the past decades due to rapid urbanization and industrialization. Therefore, it becomes a big issue and challenges which need to have a great concern, as accumulation of solid waste would result in environmental pollution. Recycling is a method which has been prominent in order to deal with the problems, as it is assumed to be economically and environmentally beneficial. It is important to have a wide number of intelligent waste management system and several methods to overcome this challenge. This paper explores the application of image processing techniques in recyclable variety type of dry waste. An automated vision-based recognition system is modelled on image analysis which involves image acquisition, feature extraction, and classification. In this study, an intelligent waste material classification system is proposed to extract 11 features from each dry waste image. There are 4 classifiers, Quadratic Support Vector Machine, Cubic Support Vector Machine, Fine K-Nearest Neighbor and Weighted K-Nearest Neighbor, were used to classify the waste into different type such as bottle, box, crumble, flat, cup, food container and tin. A Cubic Support Vector Machine (C-SVM) classifier led to promising results with accuracy of training and testing, 83.3% and 81.43%, respectively. The performance of C-SVM classifier is considerably good which provides consistent performance and faster computation time. Further classification process is improved by utilization of Speeded-Up Robust Features (SURF) method with some limitations such as longer response and computation time. 2022 Conference or Workshop Item PeerReviewed Baharuddin, Muhammad Nuzul Naim and Mehmood Khan, Hassan and Mokhtar, Norrima and Wan Mahiyiddin, Wan Amirul (2022) Automatic dry waste classification for recycling purpose. In: 27th International Conference on Artificial Life and Robotics, ICAROB 2022, 20 January 2022 - 23 January 2022, Virtual, Online. https://alife-robotics.co.jp/members2022/icarob/index.html
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Baharuddin, Muhammad Nuzul Naim
Mehmood Khan, Hassan
Mokhtar, Norrima
Wan Mahiyiddin, Wan Amirul
Automatic dry waste classification for recycling purpose
description There has been a serious increment in solid waste in the past decades due to rapid urbanization and industrialization. Therefore, it becomes a big issue and challenges which need to have a great concern, as accumulation of solid waste would result in environmental pollution. Recycling is a method which has been prominent in order to deal with the problems, as it is assumed to be economically and environmentally beneficial. It is important to have a wide number of intelligent waste management system and several methods to overcome this challenge. This paper explores the application of image processing techniques in recyclable variety type of dry waste. An automated vision-based recognition system is modelled on image analysis which involves image acquisition, feature extraction, and classification. In this study, an intelligent waste material classification system is proposed to extract 11 features from each dry waste image. There are 4 classifiers, Quadratic Support Vector Machine, Cubic Support Vector Machine, Fine K-Nearest Neighbor and Weighted K-Nearest Neighbor, were used to classify the waste into different type such as bottle, box, crumble, flat, cup, food container and tin. A Cubic Support Vector Machine (C-SVM) classifier led to promising results with accuracy of training and testing, 83.3% and 81.43%, respectively. The performance of C-SVM classifier is considerably good which provides consistent performance and faster computation time. Further classification process is improved by utilization of Speeded-Up Robust Features (SURF) method with some limitations such as longer response and computation time.
format Conference or Workshop Item
author Baharuddin, Muhammad Nuzul Naim
Mehmood Khan, Hassan
Mokhtar, Norrima
Wan Mahiyiddin, Wan Amirul
author_facet Baharuddin, Muhammad Nuzul Naim
Mehmood Khan, Hassan
Mokhtar, Norrima
Wan Mahiyiddin, Wan Amirul
author_sort Baharuddin, Muhammad Nuzul Naim
title Automatic dry waste classification for recycling purpose
title_short Automatic dry waste classification for recycling purpose
title_full Automatic dry waste classification for recycling purpose
title_fullStr Automatic dry waste classification for recycling purpose
title_full_unstemmed Automatic dry waste classification for recycling purpose
title_sort automatic dry waste classification for recycling purpose
publishDate 2022
url http://eprints.utm.my/id/eprint/101441/
https://alife-robotics.co.jp/members2022/icarob/index.html
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