Unsupervised Waste Classification by Dual-Encoder Contrastive Learning and Multi-Clustering Voting (Decmcv)

27 Pages Posted: 22 Mar 2025

See all articles by Kui Huang

Kui Huang

Dali University

Mengke Song

Dali University

Shuo Ba

Dali University

Ling An

Dali University

Huajie Liang

Dali University

Huanxi Deng

Dali University

Yang Liu

Dali University

Zhenyu Zhang

Dali University

Chichun Zhou

Dali University

Abstract

Waste classification is crucial for improving processing efficiency and reducing environmental pollution. Supervised deep learning methods are commonly used for automated waste classification, but they rely heavily on large labeled datasets, which are costly and inefficient to obtain. Real-world waste data often exhibit category and style biases, such as variations in camera angles, lighting conditions, and types of waste, which can impact the model's performance and generalization ability. Therefore, constructing a bias-free dataset is essential. Manual labeling is not only costly but also inefficient. While self-supervised learning helps address data scarcity, it still depends on some labeled data and generally results in lower accuracy compared to supervised methods. Unsupervised methods show potential in certain cases but typically do not perform as well as supervised models, highlighting the need for an efficient and cost-effective unsupervised approach. This study presents a novel unsupervised method, Dual-Encoder Contrastive Learning with Multi-Clustering Voting (DECMCV). The approach involves using a pre-trained ConvNeXt model for image encoding, leveraging VisionTransformer to generate positive samples, and applying a multi-clustering voting mechanism to address data labeling and domain shift issues. Experimental results demonstrate that DECMCV achieves classification accuracies of 93.78% and 98.29% on the TrashNet and Huawei Cloud datasets, respectively, outperforming or matching supervised models. On a real-world dataset of 4,169 waste images, only 50 labeled samples were needed to accurately label thousands, improving classification accuracy by 29.85% compared to supervised models. This method effectively addresses style differences, enhances model generalization, and contributes to the advancement of automated waste classification.

Keywords: Unsupervised domestic waste classification, Contrastive Learning, Domestic waste dataset, Unbiased Datasets

Suggested Citation

Huang, Kui and Song, Mengke and Ba, Shuo and An, Ling and Liang, Huajie and Deng, Huanxi and Liu, Yang and Zhang, Zhenyu and Zhou, Chichun, Unsupervised Waste Classification by Dual-Encoder Contrastive Learning and Multi-Clustering Voting (Decmcv). Available at SSRN: https://ssrn.com/abstract=5189245 or http://dx.doi.org/10.2139/ssrn.5189245

Kui Huang

Dali University ( email )

Dali
China

Mengke Song

Dali University ( email )

Dali
China

Shuo Ba

Dali University ( email )

Dali
China

Ling An

Dali University ( email )

Dali
China

Huajie Liang

Dali University ( email )

Dali
China

Huanxi Deng

Dali University ( email )

Dali
China

Yang Liu

Dali University ( email )

Dali
China

Zhenyu Zhang

Dali University ( email )

Dali
China

Chichun Zhou (Contact Author)

Dali University ( email )

Dali
China

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