Towards Accurate and Efficient Waste Image Classification: A Hybrid Deep Learning and Machine Learning Approach
Ngoc-Bao-Quang Nguyen, Tuan-Minh Do, Cong-Tam Phan, Thi-Thu-Hong Phan

TL;DR
This paper compares machine learning, deep learning, and hybrid methods for waste image classification, demonstrating that the hybrid approach achieves superior accuracy and efficiency across multiple datasets.
Contribution
It introduces a hybrid deep learning and machine learning framework that outperforms existing methods in waste image classification tasks.
Findings
Hybrid method achieves up to 100% accuracy on TrashNet.
Feature selection reduces dimensionality by over 95%.
Hybrid approach surpasses state-of-the-art benchmarks.
Abstract
Automated image-based garbage classification is a critical component of global waste management; however, systematic benchmarks that integrate Machine Learning (ML), Deep Learning (DL), and efficient hybrid solutions remain underdeveloped. This study provides a comprehensive comparison of three paradigms: (1) machine learning algorithms using handcrafted features, (2) deep learning architectures, including ResNet variants and EfficientNetV2S, and (3) a hybrid approach that utilizes deep models for feature extraction combined with classical classifiers such as Support Vector Machine and Logistic Regression to identify the most effective strategy. Experiments on three public datasets - TrashNet, Garbage Classification, and a refined Household Garbage Dataset (with 43 corrected mislabels)- demonstrate that the hybrid method consistently outperforms the others, achieving up to 100% accuracy…
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