4.7 Article

Learning Multiscale Convolutional Dictionaries for Image Reconstruction

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCI.2022.3175309

关键词

Computed tomography; convolutional neural networks; convolutional sparse coding; dictionary learning; inverse problems; multiscale representation; U-Net

资金

  1. European Research Council [852821-SWING]

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The study explores the success of convolutional neural networks in imaging inverse problems and proposes a multiscale convolutional dictionary structure that can compete with state-of-the-art CNNs and perform well on a range of challenging inverse problems.
Convolutional neural networks (CNNs) have been tremendously successful in solving imaging inverse problems. To understand their success, an effective strategy is to construct simpler and mathematically more tractable convolutional sparse coding (CSC) models that share essential ingredients with CNNs. Existing CSC methods, however, underperform leading CNNs in challenging inverse problems. We hypothesize that the performance gap may be attributed in part to how they process images at different spatial scales: While many CNNs use multiscale feature representations, existing CSC models mostly rely on single-scale dictionaries. To close the performance gap, we thus propose a multiscale convolutional dictionary structure. The proposed dictionary structure is derived from the U-Net, arguably the most versatile and widely used CNN for image-to-image learning problems. We show that incorporating the proposed multiscale dictionary in an otherwise standard CSC framework yields performance competitive with state-of-the-art CNNs across a range of challenging inverse problems including CT and MRI reconstruction. Our work thus demonstrates the effectiveness and scalability of the multiscale CSC approach in solving challenging inverse problems.

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