# AMSA-Net: attention-based multi-scale feature aggregation network for single image dehazing

**Authors:** Shanqin Wang, Mengjun Miao, Miao Zhang

PMC · DOI: 10.3389/fnbot.2026.1698100 · Frontiers in Neurorobotics · 2026-02-17

## TL;DR

AMSA-Net is a new deep learning model that improves single-image dehazing by better capturing haze density and spatial distribution.

## Contribution

The novel AMSA-Net introduces a multi-scale hybrid attention feature aggregation module for more effective haze removal.

## Key findings

- AMSA-Net outperforms existing methods in dehazing quality.
- The MSHA-FAM module effectively captures haze density and spatial information.
- Ablation studies confirm the effectiveness of the proposed components.

## Abstract

Deep learning technology promotes the development of single-image dehazing. However, many existing methods fail to fully consider the haze density and its spatial distribution, which limits the improvement of dehazing performance.

To address this issue, we propose an attention-based multi-scale feature aggregation network (AMSA-Net) for single-image dehazing.

AMSA-Net is an encoding and decoding structure. Its encoder and decoder are composed of multi-scale hybrid attention feature aggregation module (MSHA-FAM). The module can perceive the haze density and spatial information in the haze image, which helps to improve the dehazing effect. MSHA-FAM is composed of two key components: the scale-aware coordinate residual module (SCRM) and multi-scale feature refinement residual module (MSFRRM). SCRM uses improved coordinate attention to effectively capture haze density and spatial characteristics, thus significantly improving dehazing effect. MSFRRM extracts semantic features through up-sampling and down-sampling, and uses improved pixel attention mechanism to enhance key features. In the overall MSHA-FAM pipeline, SCRM first learns the density and spatial distribution characteristics of haze, then refines it through MSFRRM, so as to remove haze more effectively.

The experimental results demonstrate that our proposed AMSA-Net is superior to the comparison methods in terms of dehazing quality. Ablation studies further verify the effectiveness of the proposed modules.

In this work, we present AMSA-Net, which has achieved good dehazing performance and can provide high-quality input for subsequent computer vision tasks.

## Full-text entities

- **Diseases:** SCRM (MESH:D018365)
- **Chemicals:** CA (-)

## Full text

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## References

45 references — full list in the complete paper: https://tomesphere.com/paper/PMC12953467/full.md

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Source: https://tomesphere.com/paper/PMC12953467