用于单幅图像去模糊的注意力神经网络中的多尺度注意力

IF 3.7 2区 工程技术 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Displays Pub Date : 2024-10-19 DOI:10.1016/j.displa.2024.102860
Ho Sub Lee , Sung In Cho
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引用次数: 0

摘要

图像去模糊是计算机视觉领域的一项重要任务,它可以消除模糊伪影,恢复给定输入图像的细节。最近,深度神经网络(DNN)的注意力机制在图像去模糊方面表现出了良好的性能。然而,它们很难通过平衡空间细节和高级上下文信息来学习复杂的模糊和清晰关系。此外,大多数现有的基于注意力的 DNN 方法无法选择性地利用注意力和非注意力分支的信息。为了应对这些挑战,我们提出了一种用于图像去模糊的新方法,称为 "注意力中的多尺度注意力"(MSAiA)。MSAiA 利用信道和空间信息的共同依赖性,结合动态权重生成,允许自适应地改变注意力和非注意力分支的权重值。现有的注意力机制主要考虑信道或空间依赖性,没有充分利用注意力和非注意力分支的信息,与之相比,我们提出的 AiA 设计结合了信道和空间注意力。这种注意力机制能有效利用信道-空间信息之间的依赖关系,为注意力分支和非注意力分支分配权重值,从而充分利用两个分支的信息。因此,注意力分支能更有效地吸收有用信息,而非注意力分支则能避免有用信息。此外,我们还采用了一种新颖的多尺度神经网络,旨在通过进一步利用多尺度信息来学习模糊伪影与原始清晰图像之间的关系。实验结果证明,与最先进的方法相比,所提出的 MSAiA 实现了更优越的去模糊性能。
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Multi-scale attention in attention neural network for single image deblurring
Image deblurring, which eliminates blurring artifacts to recover details from a given input image, represents an important task for the computer vision field. Recently, the attention mechanism with deep neural networks (DNN) demonstrates promising performance of image deblurring. However, they have difficulty learning complex blurry and sharp relationships through a balance of spatial detail and high-level contextualized information. Moreover, most existing attention-based DNN methods fail to selectively exploit the information from attention and non-attention branches. To address these challenges, we propose a new approach called Multi-Scale Attention in Attention (MSAiA) for image deblurring. MSAiA incorporates dynamic weight generation by leveraging the joint dependencies of channel and spatial information, allowing for adaptive changes to the weight values in attention and non-attention branches. In contrast to existing attention mechanisms that primarily consider channel or spatial dependencies and do not adequately utilize the information from attention and non-attention branches, our proposed AiA design combines channel-spatial attention. This attention mechanism effectively utilizes the dependencies between channel-spatial information to allocate weight values for attention and non-attention branches, enabling the full utilization of information from both branches. Consequently, the attention branch can more effectively incorporate useful information, while the non-attention branch avoids less useful information. Additionally, we employ a novel multi-scale neural network that aims to learn the relationships between blurring artifacts and the original sharp image by further exploiting multi-scale information. The experimental results prove that the proposed MSAiA achieves superior deblurring performance compared with the state-of-the-art methods.
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来源期刊
Displays
Displays 工程技术-工程:电子与电气
CiteScore
4.60
自引率
25.60%
发文量
138
审稿时长
92 days
期刊介绍: Displays is the international journal covering the research and development of display technology, its effective presentation and perception of information, and applications and systems including display-human interface. Technical papers on practical developments in Displays technology provide an effective channel to promote greater understanding and cross-fertilization across the diverse disciplines of the Displays community. Original research papers solving ergonomics issues at the display-human interface advance effective presentation of information. Tutorial papers covering fundamentals intended for display technologies and human factor engineers new to the field will also occasionally featured.
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