Efficient waste classification is crucial for promoting recycling and achieving sustainable waste management. Real-world waste streams, however, often include mixed, deformed, and contaminated items, making manual sorting inefficient and error prone. A deep learning-based system for multi-class classification of heterogeneous waste using the RealWaste dataset is presented in this paper, which reflects actual disposal conditions such as cluttered backgrounds and overlapping materials. We fine-tune and evaluate several convolutional neural networks (CNNs), including InceptionV3, ResNet101, DenseNet, VGG, EfficientNet, and MobileNet. Among these, ResNet101 demonstrated the best performance, achieving a validation accuracy of 98.86%, loss of 0.0379, and 0.99 as F1 score. We also introduce hybrid models (e.g., ResNet101 + InceptionV3), which improved precision in complex categories such as textiles and miscellaneous trash. Furthermore, a confidence score evaluation strategy is proposed to assess model reliability, revealing high confidence (≥ 0.95) for visually distinct classes like vegetation, plastic, and food organics. Our findings establish a robust and scalable benchmark for deploying intelligent waste classification systems in real-world, sustainability-driven environments.
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Yogesh Kumar
Pandit Deendayal Petroleum University
Priya Bhardwaj
Dehradun Institute of Technology University
Sugandhi Malhotra
Fortis Hospital
Scientific Reports
Torrens University Australia
Pandit Deendayal Petroleum University
Dehradun Institute of Technology University
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Kumar et al. (Wed,) studied this question.
synapsesocial.com/papers/69a134fbed1d949a99abe72c — DOI: https://doi.org/10.1038/s41598-026-41001-8
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