EBSCO Logo
Connecting you to content on EBSCOhost
Results
Title

GFN: A Garbage Classification Fusion Network Incorporating Multiple Attention Mechanisms.

Authors

Wang, Zhaoqi; Zhou, Wenxue; Li, Yanmei

Abstract

With the increasing global attention to environmental protection and the sustainable use of resources, waste classification has become a critical issue that needs urgent resolution in social development. Compared with the traditional manual waste classification methods, deep learning-based waste classification systems offer significant advantages. This paper proposes an innovative deep learning framework, Garbage FusionNet (GFN), aimed at tackling the waste classification challenge. GFN enhances classification performance by integrating the local feature extraction strengths of ResNet with the global information processing capabilities of the Vision Transformer (ViT). Furthermore, GFN incorporates the Pyramid Pooling Module (PPM) and the Convolutional Block Attention Module (CBAM), which collectively improve multi-scale feature extraction and emphasize critical features, thereby increasing the model's robustness and accuracy. The experimental results on the Garbage Dataset and Trashnet demonstrate that GFN achieves superior performance compared with other comparison models.

Subjects

CONVOLUTIONAL neural networks; TRANSFORMER models; PROCESS capability; FEATURE extraction; SOCIAL development; DEEP learning

Publication

Electronics (2079-9292), 2025, Vol 14, Issue 1, p75

ISSN

2079-9292

Publication type

Academic Journal

DOI

10.3390/electronics14010075

EBSCO Connect | Privacy policy | Terms of use | Copyright | Manage my cookies
Journals | Subjects | Sitemap
© 2025 EBSCO Industries, Inc. All rights reserved