Ahmad Gulzar, Aleem Fizza Muhammad, Alyas Tahir, Abbas Qaiser, Nawaz Waqas, Ghazal Taher M, Aziz Abdul, Aleem Saira, Tabassum Nadia, Ibrahim Aidarus Mohamed
Department of computer Science, Minhaj University, Lahore, Pakistan.
Department of computer Science, Lahore Garrison University, Lahore, Pakistan.
Sci Rep. 2025 Jul 25;15(1):27078. doi: 10.1038/s41598-025-08461-w.
Smart cities’ have experienced an increasingly higher rate of urbanization and increase of the population leading to strengthening the pressing needs in waste management. In this paper, we present an intelligent waste classification system that utilises Convolutional Neural Networks (CNNs) for automatic segregation into twelve categories of waste, employing image data. The model is trained on 15,535 images from a publicly available dataset using preprocessing and data augmentation to increase generalisation and mitigate class imbalance. A performance comparison in terms of precision, recall, F1 score, and accuracy shows that the proposed ResNet-based model yields a classification accuracy of 98.16%, outperforming previous work on conventional deep learning architectures. Experimental results demonstrate that the model is a robust framework for handling various types of waste (organic, recyclable, and hazardous) and is a very general model, as confirmed by cross-validation and real-world tests. The proposed system demonstrates great promise for upscaling in automatic waste management towards long-term urban sustainability, improved recycling, and reduced environmental threats.
智慧城市的城市化率越来越高,人口不断增加,这使得垃圾管理的迫切需求日益增强。在本文中,我们提出了一种智能垃圾分类系统,该系统利用卷积神经网络(CNN),通过图像数据将垃圾自动分类为十二类。该模型使用公开可用数据集的15535张图像进行训练,采用预处理和数据增强技术来提高泛化能力并缓解类别不平衡问题。在精度、召回率、F1分数和准确率方面的性能比较表明,所提出的基于ResNet的模型分类准确率达到98.16%,优于以往在传统深度学习架构上的工作。实验结果表明,该模型是一个处理各类垃圾(有机垃圾、可回收垃圾和有害垃圾)的强大框架,并且通过交叉验证和实际测试证实是一个非常通用的模型。所提出的系统在扩大自动垃圾管理规模以实现长期城市可持续性、改善回收利用和减少环境威胁方面展现出巨大潜力。