DedustNet: A Frequency-dominated Swin Transformer-based Wavelet Network for Agricultural Dust Removal
Shengli Zhang, Zhiyong Tao, and Sen Lin

TL;DR
DedustNet introduces a novel Swin Transformer-based wavelet network for agricultural dust removal, combining frequency domain analysis with deep learning to enhance dust removal performance in complex dusty environments.
Contribution
This paper presents the first use of Swin Transformer units in wavelet networks for agricultural dust removal, integrating frequency-dominated blocks and multi-scale feature fusion.
Findings
Outperforms existing dust removal methods in accuracy and reliability.
Effectively preserves image details while removing dust.
Demonstrates strong generalization on real-world dusty datasets.
Abstract
While dust significantly affects the environmental perception of automated agricultural machines, the existing deep learning-based methods for dust removal require further research and improvement in this area to improve the performance and reliability of automated agricultural machines in agriculture. We propose an end-to-end trainable learning network (DedustNet) to solve the real-world agricultural dust removal task. To our knowledge, DedustNet is the first time Swin Transformer-based units have been used in wavelet networks for agricultural image dusting. Specifically, we present the frequency-dominated block (DWTFormer block and IDWTFormer block) by adding a spatial features aggregation scheme (SFAS) to the Swin Transformer and combining it with the wavelet transform, the DWTFormer block and IDWTFormer block, alleviating the limitation of the global receptive field of Swin…
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Taxonomy
TopicsEffects of Environmental Stressors on Livestock · Air Quality Monitoring and Forecasting · Fire Detection and Safety Systems
MethodsMulti-Head Attention · Attention Is All You Need · Linear Layer · Stochastic Depth · Softmax · Adam · Layer Normalization · Residual Connection · Absolute Position Encodings · Dropout
