Abstract

We present a new image reconstruction method that replaces the projector in a projected gradient descent (PGD) with a convolutional neural network (CNN). Recently, CNNs trained as image-to-image regressors have been successfully used to solve inverse problems in imaging. However, unlike existing iterative image reconstruction algorithms, these CNN-based approaches usually lack a feedback mechanism to enforce that the reconstructed image is consistent with the measurements. We propose a relaxed version of PGD wherein gradient descent enforces measurement consistency, while a CNN recursively projects the solution closer to the space of desired reconstruction images. We show that this algorithm is guaranteed to converge and, under certain conditions, converges to a local minimum of a non-convex inverse problem. Finally, we propose a simple scheme to train the CNN to act like a projector. Our experiments on sparse-view computed-tomography reconstruction show an improvement over total variation-based regularization, dictionary learning, and a state-of-the-art deep learning-based direct reconstruction technique.

Highlights

  • W HILE medical imaging is a fairly mature area, there is recent evidence that it may still be possible to reduce the radiation dose and/or speedup the acquisition process without compromising image quality

  • FBPconv and relaxed projected gradient descent (RPGD) are used for low noise, while FBPconv40 and RPGD40 are used for high noise

  • The reconstruction SNRs and structural similarity index (SSIM) are averaged over the 25 test images

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Summary

Introduction

W HILE medical imaging is a fairly mature area, there is recent evidence that it may still be possible to reduce the radiation dose and/or speedup the acquisition process without compromising image quality. This can be accomplished with the help of sophisticated reconstruction algorithms that incorporate some prior knowledge (e.g., sparsity) on the class of underlying images [1]. Nguyen was with the Biomedical Imaging Group, École Polytechnique Fédérale de Lausanne, 1015 Lausanne, Switzerland. He is with the Viettel Research and Development Institute, Hanoi VN-100000, Vietnam

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