Image restoration in frequency space using complex-valued CNNs.

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2024-09-23 eCollection Date: 2024-01-01 DOI:10.3389/frai.2024.1353873
Zafran Hussain Shah, Marcel Müller, Wolfgang Hübner, Henning Ortkrass, Barbara Hammer, Thomas Huser, Wolfram Schenck
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Abstract

Real-valued convolutional neural networks (RV-CNNs) in the spatial domain have outperformed classical approaches in many image restoration tasks such as image denoising and super-resolution. Fourier analysis of the results produced by these spatial domain models reveals the limitations of these models in properly processing the full frequency spectrum. This lack of complete spectral information can result in missing textural and structural elements. To address this limitation, we explore the potential of complex-valued convolutional neural networks (CV-CNNs) for image restoration tasks. CV-CNNs have shown remarkable performance in tasks such as image classification and segmentation. However, CV-CNNs for image restoration problems in the frequency domain have not been fully investigated to address the aforementioned issues. Here, we propose several novel CV-CNN-based models equipped with complex-valued attention gates for image denoising and super-resolution in the frequency domains. We also show that our CV-CNN-based models outperform their real-valued counterparts for denoising super-resolution structured illumination microscopy (SR-SIM) and conventional image datasets. Furthermore, the experimental results show that our proposed CV-CNN-based models preserve the frequency spectrum better than their real-valued counterparts in the denoising task. Based on these findings, we conclude that CV-CNN-based methods provide a plausible and beneficial deep learning approach for image restoration in the frequency domain.

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使用复值 CNN 在频率空间中修复图像。
空间域实值卷积神经网络(RV-CNN)在许多图像复原任务(如图像去噪和超分辨率)中的表现都优于传统方法。对这些空间域模型产生的结果进行傅立叶分析,可以发现这些模型在正确处理全频谱方面存在局限性。缺乏完整的频谱信息会导致纹理和结构元素的缺失。为了解决这一局限性,我们探索了复值卷积神经网络(CV-CNN)在图像复原任务中的潜力。复值卷积神经网络在图像分类和分割等任务中表现出色。然而,针对频域图像复原问题的 CV-CNN 还没有得到充分研究以解决上述问题。在此,我们提出了几种基于 CV-CNN 的新型模型,这些模型配备了复值注意门,可用于频域中的图像去噪和超分辨率。在对超分辨率结构照明显微镜(SR-SIM)和传统图像数据集进行去噪时,我们的基于 CV-CNN 的模型优于其对应的实值模型。此外,实验结果表明,在去噪任务中,我们提出的基于 CV-CNN 的模型比其对应的实值模型能更好地保留频谱。基于这些发现,我们得出结论:基于 CV-CNN 的方法为频域图像复原提供了一种可行且有益的深度学习方法。
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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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