The Garbage Dataset (GD): A Multi-Class Image Benchmark for Automated Waste Segregation
Suman Kunwar

TL;DR
The Garbage Dataset (GD) is a comprehensive image benchmark for automated waste segregation, enabling machine learning research on classifying household waste with real-world challenges like class imbalance and background complexity.
Contribution
It introduces a large, diverse, and validated waste image dataset with benchmark results, highlighting practical challenges for waste classification models.
Findings
EfficientNetV2S achieved 95.13% accuracy and 0.95 F1-score.
The dataset reveals class imbalance and background variability issues.
Benchmarking shows environmental impact considerations in model deployment.
Abstract
This study introduces the Garbage Dataset (GD), a publicly available image dataset designed to advance automated waste segregation through machine learning and computer vision. It is a diverse dataset that covers 10 categories of common household waste: metal, glass, biological, paper, battery, trash, cardboard, shoes, clothes, and plastic. The dataset comprises 12,259 labeled images collected through multiple methods, including the DWaste mobile app and curated web sources. The methods included rigorous validation through checksums and outlier detection, analysis of class imbalance and visual separability through PCA/t-SNE, and assessment of background complexity using entropy and saliency measures. The dataset was benchmarked using state-of-the-art deep learning models (EfficientNetV2M, EfficientNetV2S, MobileNet, ResNet50, ResNet101) evaluated on performance metrics and operational…
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Taxonomy
TopicsMunicipal Solid Waste Management · Advanced Neural Network Applications · Recycling and Waste Management Techniques
