S2VSNet: Single stage V-shaped network for image deraining & dehazing

IF 2.9 3区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Digital Signal Processing Pub Date : 2024-09-30 DOI:10.1016/j.dsp.2024.104786
Thatikonda Ragini , Kodali Prakash , Ramalinga Swamy Cheruku
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Abstract

Producing high-quality, noise-free images from noisy or hazy inputs relies on essential tasks such as single image deraining and dehazing. In many advanced multi-stage networks, there is often an imbalance in contextual information, leading to increased complexity. To address these challenges, we propose a simplified method inspired by a U-Net structure, resulting in the “Single-Stage V-Shaped Network” (S2VSNet), capable of handling both deraining and dehazing tasks. A key innovation in our approach is the introduction of a Feature Fusion Module (FFM), which facilitates the sharing of information across multiple scales and hierarchical layers within the encoder-decoder structure. As the network progresses towards deeper layers, the FFM gradually integrates insights from higher levels, ensuring that spatial details are preserved while contextual feature maps are balanced. This integration enhances the image processing capability, producing noise-free, high-quality outputs. To maintain efficiency and reduce system complexity, we replaced or removed several non-essential non-linear activation functions, opting instead for simple multiplication operations. Additionally, we introduced a “Multi-Head Attention Integrated Module” (MHAIM) as an intermediary layer between encoder-decoder levels. This module addresses the limited receptive fields of traditional Convolutional Neural Networks (CNNs), allowing for the capture of more comprehensive feature-map information. Our focus on deraining and dehazing led to extensive experiments on a wide range of synthetic and real-world datasets. To further validate the robustness of our network, we implemented S2VSNet on a low-end edge device, achieving deraining in 2.46 seconds.
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S2VSNet:用于图像去毛刺和去细化的单级 V 型网络
要从嘈杂或朦胧的输入图像中生成高质量、无噪音的图像,需要完成一些基本任务,如单幅图像去毛刺和去阴影。在许多先进的多级网络中,上下文信息往往不平衡,导致复杂性增加。为了应对这些挑战,我们提出了一种受 U 型网络结构启发的简化方法,即 "单级 V 型网络"(S2VSNet),它能够同时处理去毛刺和去雾化任务。我们的方法的一个关键创新是引入了特征融合模块(FFM),该模块有助于在编码器-解码器结构中的多个尺度和层次层之间共享信息。随着网络向更深层次发展,FFM 会逐渐整合来自更高层次的洞察力,确保保留空间细节,同时平衡上下文特征图。这种整合增强了图像处理能力,产生无噪声的高质量输出。为了保持效率并降低系统复杂性,我们替换或删除了几个非必要的非线性激活函数,转而使用简单的乘法运算。此外,我们还引入了 "多头注意力集成模块"(MHAIM),作为编码器-解码器层之间的中间层。该模块解决了传统卷积神经网络(CNN)感受野有限的问题,从而可以捕捉到更全面的特征图信息。我们将重点放在了去毛刺和去马赛克上,并在大量的合成数据集和真实数据集上进行了广泛的实验。为了进一步验证我们网络的鲁棒性,我们在低端边缘设备上实施了 S2VSNet,在 2.46 秒内实现了去链。
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来源期刊
Digital Signal Processing
Digital Signal Processing 工程技术-工程:电子与电气
CiteScore
5.30
自引率
17.20%
发文量
435
审稿时长
66 days
期刊介绍: Digital Signal Processing: A Review Journal is one of the oldest and most established journals in the field of signal processing yet it aims to be the most innovative. The Journal invites top quality research articles at the frontiers of research in all aspects of signal processing. Our objective is to provide a platform for the publication of ground-breaking research in signal processing with both academic and industrial appeal. The journal has a special emphasis on statistical signal processing methodology such as Bayesian signal processing, and encourages articles on emerging applications of signal processing such as: • big data• machine learning• internet of things• information security• systems biology and computational biology,• financial time series analysis,• autonomous vehicles,• quantum computing,• neuromorphic engineering,• human-computer interaction and intelligent user interfaces,• environmental signal processing,• geophysical signal processing including seismic signal processing,• chemioinformatics and bioinformatics,• audio, visual and performance arts,• disaster management and prevention,• renewable energy,
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