RMANet:用于渐进式低照度图像增强的精制混合注意力网络

IF 3.4 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Signal Processing Pub Date : 2024-09-06 DOI:10.1016/j.sigpro.2024.109689
Ke Chen , Kaibing Zhang , Feifei Pang , Xinbo Gao , Guang Shi
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引用次数: 0

摘要

多尺度特征融合被认为是提高低照度图像质量的有效策略。然而,大多数现有方法都是直接从严重降频和降采样的低照度图像中提取多尺度上下文信息,结果导致大量意外噪声和降频污染了所学的多尺度特征。此外,直接连接多尺度特征图时存在大量冗余和重叠特征,无法考虑不同尺度的不同贡献。为了克服上述挑战,本文提出了一种用于弱光图像增强的新方法,即渐进式精炼混合注意力网络(RMANet)。所提出的 RMANet 首先针对单尺度预增强,然后以从粗到细的方式逐步增加多尺度空间通道注意力融合。此外,我们还精心设计了一个 "精炼-混合注意力模块"(RMAM),首先学习并行的空间-通道主导特征,然后选择性地在多个尺度上整合空间和通道维度的主导特征。值得注意的是,我们提出的 RMANet 是一个轻量级但灵活的端到端框架,可适应各种应用场景。在三个流行的基准数据库上进行的全面实验表明,我们的方法在定量质量指标和视觉质量评估方面都超越了现有方法。代码可在 https://github.com/kbzhang0505/RMANet 上获取。
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RMANet: Refined-mixed attention network for progressive low-light image enhancement

Multi-scale feature fusion has been recognized as an effective strategy to boost the quality of low-light images. However, most existing methods directly extract multi-scale contextual information from severely degraded and down-sampled low-light images, resulting in a large amount of unexpected noise and degradation contaminating the learned multi-scale features. Moreover, there exist large redundant and overlapping features when directly concatenating multi-scale feature maps, which fails to consider different contributions of different scales. To conquer the above challenges, this paper presents a novel approach termed progressive Refined-Mixed Attention Network (RMANet) for low-light image enhancement. The proposed RMANet first targets a single-scale pre-enhancement and then progressively increases multi-scale spatial-channel attention fusion in a coarse-to-fine fashion. Additionally, we elaborately devise a Refined-Mixed Attention Module (RMAM) to first learn a parallel spatial-channel dominant features and then selectively integrate dominant features in the spatial and channel dimensions across multiple scales. Noticeably, our proposed RMANet is a lightweight yet flexible end-to-end framework that adapts to diverse application scenarios. Thorough experiments carried out upon three popular benchmark databases demonstrate that our approach surpasses existing methods in terms of both quantitative quality metrics and visual quality assessment. The code will be available at https://github.com/kbzhang0505/RMANet.

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来源期刊
Signal Processing
Signal Processing 工程技术-工程:电子与电气
CiteScore
9.20
自引率
9.10%
发文量
309
审稿时长
41 days
期刊介绍: Signal Processing incorporates all aspects of the theory and practice of signal processing. It features original research work, tutorial and review articles, and accounts of practical developments. It is intended for a rapid dissemination of knowledge and experience to engineers and scientists working in the research, development or practical application of signal processing. Subject areas covered by the journal include: Signal Theory; Stochastic Processes; Detection and Estimation; Spectral Analysis; Filtering; Signal Processing Systems; Software Developments; Image Processing; Pattern Recognition; Optical Signal Processing; Digital Signal Processing; Multi-dimensional Signal Processing; Communication Signal Processing; Biomedical Signal Processing; Geophysical and Astrophysical Signal Processing; Earth Resources Signal Processing; Acoustic and Vibration Signal Processing; Data Processing; Remote Sensing; Signal Processing Technology; Radar Signal Processing; Sonar Signal Processing; Industrial Applications; New Applications.
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