Real-time intelligent recycle waste detection and classification using you only look once version 5 / Aiman Syafwan Amran

Recycle waste is an integral part of our daily lives. It generates various type of waste materials in our homes, workplaces and communities. With a growing population and urbanization, it is crucial to prioritize responsible waste management practices to address the environmental challenges faced by...

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Main Author: Amran, Aiman Syafwan
Format: Thesis
Language:en
Published: 2023
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/88976/1/88976.pdf
https://ir.uitm.edu.my/id/eprint/88976/
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author Amran, Aiman Syafwan
author_facet Amran, Aiman Syafwan
author_sort Amran, Aiman Syafwan
building Tun Abdul Razak Library
collection Institutional Repository
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
continent Asia
country Malaysia
description Recycle waste is an integral part of our daily lives. It generates various type of waste materials in our homes, workplaces and communities. With a growing population and urbanization, it is crucial to prioritize responsible waste management practices to address the environmental challenges faced by the country. In Malaysia, the traditional approach to recycle waste detection and classification primarily relies on manual sorting and visual inspection by waste management personnel. When recyclable waste arrives at recycling centers or facilities, workers manually separate the materials based on their visual appearance and physical characteristics. Because of that, this project aims to detect and classify a typed of recycled waste such paper, plastic and metal. It uses YOLOv5 object detection and classification algorithm. This project uses the images of paper, plastic and metal gathered from Kaggle and GitHub dataset. This system was put to two tests of testing which were functionality testing of the whole system and the metric evaluation of the object detection and classification model. The object detection and classification algorithm achieved 91.9% mean average precision in metric evaluation. The system was developed as a web-based system in order to make it easily accessible by the target user which the governance body from any public nor private sectors. The recommendation on the future work is to improve the detection model for it to be able to detect small size object from the image to make the system more reliable.
format Thesis
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institution Universiti Teknologi Mara
language en
publishDate 2023
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spelling my.uitm.ir-889762024-03-19T07:07:20Z https://ir.uitm.edu.my/id/eprint/88976/ Real-time intelligent recycle waste detection and classification using you only look once version 5 / Aiman Syafwan Amran Amran, Aiman Syafwan TD Environmental technology. Sanitary engineering Recycle waste is an integral part of our daily lives. It generates various type of waste materials in our homes, workplaces and communities. With a growing population and urbanization, it is crucial to prioritize responsible waste management practices to address the environmental challenges faced by the country. In Malaysia, the traditional approach to recycle waste detection and classification primarily relies on manual sorting and visual inspection by waste management personnel. When recyclable waste arrives at recycling centers or facilities, workers manually separate the materials based on their visual appearance and physical characteristics. Because of that, this project aims to detect and classify a typed of recycled waste such paper, plastic and metal. It uses YOLOv5 object detection and classification algorithm. This project uses the images of paper, plastic and metal gathered from Kaggle and GitHub dataset. This system was put to two tests of testing which were functionality testing of the whole system and the metric evaluation of the object detection and classification model. The object detection and classification algorithm achieved 91.9% mean average precision in metric evaluation. The system was developed as a web-based system in order to make it easily accessible by the target user which the governance body from any public nor private sectors. The recommendation on the future work is to improve the detection model for it to be able to detect small size object from the image to make the system more reliable. 2023 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/88976/1/88976.pdf Real-time intelligent recycle waste detection and classification using you only look once version 5 / Aiman Syafwan Amran. (2023) Degree thesis, thesis, Universiti Teknologi MARA, Melaka. <http://terminalib.uitm.edu.my/88976.pdf>
spellingShingle TD Environmental technology. Sanitary engineering
Amran, Aiman Syafwan
Real-time intelligent recycle waste detection and classification using you only look once version 5 / Aiman Syafwan Amran
title Real-time intelligent recycle waste detection and classification using you only look once version 5 / Aiman Syafwan Amran
title_full Real-time intelligent recycle waste detection and classification using you only look once version 5 / Aiman Syafwan Amran
title_fullStr Real-time intelligent recycle waste detection and classification using you only look once version 5 / Aiman Syafwan Amran
title_full_unstemmed Real-time intelligent recycle waste detection and classification using you only look once version 5 / Aiman Syafwan Amran
title_short Real-time intelligent recycle waste detection and classification using you only look once version 5 / Aiman Syafwan Amran
title_sort real-time intelligent recycle waste detection and classification using you only look once version 5 / aiman syafwan amran
topic TD Environmental technology. Sanitary engineering
url https://ir.uitm.edu.my/id/eprint/88976/1/88976.pdf
https://ir.uitm.edu.my/id/eprint/88976/
url_provider http://ir.uitm.edu.my/