
Shamna NV,

Fathima Musfira,

Ayshathul Shafra,

Abdul Baseeth A.M,

Mohammed Thanseer,
- Associate Professor, Department of Computer Science and Engineering, P A College of Engineering, Mangalore, Karnataka, India
- Student, Department of Computer Science and Engineering, P A College of Engineering, Mangalore, Karnataka, India
- Student, Department of Computer Science and Engineering, P A College of Engineering, Mangalore, Karnataka, India
- Student, Department of Computer Science and Engineering, P A College of Engineering, Mangalore, Karnataka, India
- Student, Department of Computer Science and Engineering, P A College of Engineering, Mangalore, Karnataka, India
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Waste segregation promotes energy production from waste, landfill depletion, recycling, and waste reduction. Recycled materials become contaminated by waste that is disposed of inappropriately. Automated computerized trash sorting is one technique to help reduce contamination, a major problem for the recycling sector. The ability to come up with models or techniques that assist individuals in sorting waste has become crucial to properly disposing of it. Even with the wide variety of recycling categories available, many people are still confused about how to select the ideal trash can for getting rid of every single waste item. Across the globe, waste management and careful sorting are considered essential elements of ecological development. Society must reduce waste by recycling and reusing discarded resources to lessen environmental concerns. Waste needs to be separated into recyclable and non-recyclable categories to be disposed of appropriately. The objective of this project is to create an automated waste detection system that gathers waste photos or videos from a camera with object recognition, detection, and prediction using a deep learning algorithm. We’ll classify the waste items, which include things like clothing, plastic, wood, paper, balls, bottles, glasses, cups, cutlery, bowls, fruit, and toothbrushes.
Keywords: Water segregation, energy, object recognition, deep learning, waste
[This article belongs to Journal of Electronic Design Technology (joedt)]
Shamna NV, Fathima Musfira, Ayshathul Shafra, Abdul Baseeth A.M, Mohammed Thanseer. Intelligent Waste Management through Automated Sorting for Enhanced Recycling and Sustainability. Journal of Electronic Design Technology. 2024; 15(03):11-17.
Shamna NV, Fathima Musfira, Ayshathul Shafra, Abdul Baseeth A.M, Mohammed Thanseer. Intelligent Waste Management through Automated Sorting for Enhanced Recycling and Sustainability. Journal of Electronic Design Technology. 2024; 15(03):11-17. Available from: https://journals.stmjournals.com/joedt/article=2024/view=0
References
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- Abdu H, Noor MH. A survey on waste detection and classification using deep learning. IEEE Access. 2022 Dec 5;10:128151–65.
- Narayan Y. DeepWaste: Applying deep learning to waste classification for a sustainable planet. arXiv preprint arXiv:2101.05960. 2021 Jan 15.
- Vo AH, Vo MT, Le T. A novel framework for trash classification using deep transfer learning. IEEE Access. 2019 Dec 11;7:178631–9.
- Bobulski J, Kubanek M. Deep learning for plastic waste classification system. Applied Computational Intelligence and Soft Computing. 2021;2021(1):6626948.
- De Carolis B, Ladogana F, Macchiarulo N. Yolo trashnet: Garbage detection in video streams. In2020 IEEE Conference on Evolving and Adaptive Intelligent Systems (EAIS) 2020 May 27 (pp. 1–7). IEEE.
- Ren S, He K, Girshick R, Sun J. Faster R-CNN: Towards real-time object detection with region proposal networks. IEEE transactions on pattern analysis and machine intelligence. 2016 Jun 6;39(6):1137–49.
- He K, Zhang X, Ren S, Sun J. Deep residual learning for image recognition. In Proceedings of the IEEE conference on computer vision and pattern recognition 2016 (pp. 770–778).
- Sarker S, Rahman MS, Islam MJ, Sikder D, Alam A. Energy saving smart waste segregation and notification system. In2020 IEEE region 10 symposium (TENSYMP) 2020 Jun 5 (pp. 275–278). IEEE.
- Srikantha N, Moinuddin K, Lokesh KS, Narayana A. Waste management in IoT-enabled smart cities: a survey. Int. J. Eng. Comput. Sci. 2017;6(6):2319–7242.
- Cicceri G, Guastella DC, Sutera G, Cancelliere F, Vitti M, Randazzo G, Distefano S, Muscato G. An Intelligent Hierarchical Cyber-Physical System for beach waste management: the BIOBLU case study. IEEE Access. 2023 Sep 20.
- Bobde Y, Jothi B, Sharma A. Iweews: an intelligent waste extractor for efficient waste segregation by using deep learning.

Journal of Electronic Design Technology
| Volume | 15 |
| Issue | 03 |
| Received | 18/09/2024 |
| Accepted | 05/10/2024 |
| Published | 20/11/2024 |