Image restoration in frequency space using complex-valued CNNs.

Front Artif Intell

Center for Applied Data Science, Faculty of Engineering and Mathematics, Bielefeld University of Applied Sciences and Arts, Bielefeld, Germany.

Published: September 2024

AI Article Synopsis

  • Real-valued convolutional neural networks (RV-CNNs) excel in image restoration tasks like denoising and super-resolution, but they struggle with capturing the full frequency spectrum, leading to potential loss of detail.
  • To overcome these limitations, complex-valued convolutional neural networks (CV-CNNs) are explored, which have shown strong performance in other tasks like image classification but are underutilized in image restoration.
  • The study introduces new CV-CNN models with complex-valued attention gates for tasks in the frequency domain, demonstrating superior performance in preserving frequency information and achieving better results compared to RV-CNNs.

Article 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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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11456741PMC
http://dx.doi.org/10.3389/frai.2024.1353873DOI Listing

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