Azeem, M. Mudasar and Mehdi, Syed Anwaar and Shahid, Muhammad Ali and Hussain, Mubasher and Adnan, Muhammad and ., Spogmai and Qaisar, Bilal Shabbir (2025) Garbage Detection Using Deep Learning Methods (GD-DLM). International Journal of Innovative Science and Research Technology, 10 (9): 25sep396. pp. 608-618. ISSN 2456-2165
In today’s expanding and densely populated world, it’s crucial to design an automatic intelligent garbage sorter machine that uses advanced sensors. Garbage picture classification is a fundamental computer vision problem that must be solved before sensors can be included in this system. This research presents a model for autonomous trash classification using deep learning that can be applied in high-tech garbage sorting equipment. The 2,527 photos in the rubbish dataset are categorized into six types: trash, cardboard, glass, metal, paper, and plastic. The next step is the creation of GD-DLM, a deep learning model for garbage categorization that is an upgrade from Xception and DenseNet121 models. At last, the tests are run to evaluate GD-DLM against the best-of-breed approaches to garbage classification. The suggested Xception and DenseNet-121 models scored 92.11% and 88.63%, respectively, compared to the baseline accuracy.
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