SWAM-Net $$+$$ : Selective Wavelet Attentive M-Network $$+$$ for Single Image Dehazing

IF 1.8 3区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Circuits, Systems and Signal Processing Pub Date : 2024-09-06 DOI:10.1007/s00034-024-02837-5
Raju Nuthi, Srinivas Kankanala
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Abstract

Image dehazing is an ill-posed issue in low-level computer vision; therefore, it grabbed many researchers’ attention. The key mechanism to improve dehazing performance remains unclear, although many existing network pipelines work fine. To improve the performance of the image dehazing network, a hierarchical model named “Selective Attentive Wavelet M-Net+” (SWAM-Net+) was proposed. In order to enrich the features from the wavelet domain, a “Selective Wavelet Attentive Module” was introduced in M-Net+. Several key components of our network are used for extracting the multiscale features through parallel multi-resolution convolution channels. Contextual information is collected using a dual attention unit, and the attention is based on multiscale feature aggregation. We replaced summation and concatenation operations by introducing the Selective Kernel Feature Fusing module to achieve feature aggregation. Furthermore, our network achieves comprehensively better performance results on the RESIDE dataset both qualitatively and quantitatively.

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SWAM-Net $$+$$: 用于单幅图像去噪的选择性小波注意 M 网络 $$+$$
图像去毛刺是低级计算机视觉中的一个难题,因此吸引了众多研究人员的关注。尽管许多现有的网络管道运行良好,但提高去毛刺性能的关键机制仍不清楚。为了提高图像去毛刺网络的性能,有人提出了一种名为 "选择性注意小波 M-Net+"(SWAM-Net+)的分层模型。为了丰富小波域的特征,在 M-Net+ 中引入了 "选择性小波注意模块"。我们网络的几个关键组件用于通过并行多分辨率卷积通道提取多尺度特征。使用双注意单元收集上下文信息,注意基于多尺度特征聚合。我们通过引入选择性内核特征融合模块来实现特征聚合,从而取代了求和与串联操作。此外,我们的网络在 RESIDE 数据集上取得了定性和定量两方面全面提升的性能结果。
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来源期刊
Circuits, Systems and Signal Processing
Circuits, Systems and Signal Processing 工程技术-工程:电子与电气
CiteScore
4.80
自引率
13.00%
发文量
321
审稿时长
4.6 months
期刊介绍: Rapid developments in the analog and digital processing of signals for communication, control, and computer systems have made the theory of electrical circuits and signal processing a burgeoning area of research and design. The aim of Circuits, Systems, and Signal Processing (CSSP) is to help meet the needs of outlets for significant research papers and state-of-the-art review articles in the area. The scope of the journal is broad, ranging from mathematical foundations to practical engineering design. It encompasses, but is not limited to, such topics as linear and nonlinear networks, distributed circuits and systems, multi-dimensional signals and systems, analog filters and signal processing, digital filters and signal processing, statistical signal processing, multimedia, computer aided design, graph theory, neural systems, communication circuits and systems, and VLSI signal processing. The Editorial Board is international, and papers are welcome from throughout the world. The journal is devoted primarily to research papers, but survey, expository, and tutorial papers are also published. Circuits, Systems, and Signal Processing (CSSP) is published twelve times annually.
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