MED-PHCVMar 20, 2019

Convolutional Sparse Coding for Compressed Sensing CT Reconstruction

arXiv:1903.08549v1124 citations
Originality Incremental advance
AI Analysis

This addresses image quality issues in medical CT scans for healthcare applications, representing an incremental improvement over prior dictionary learning methods.

The paper tackled sparse-view CT reconstruction by applying convolutional sparse coding to avoid patch-based artifacts, achieving better performance than existing state-of-the-art methods in experiments with simulated and real data.

Over the past few years, dictionary learning (DL)-based methods have been successfully used in various image reconstruction problems. However, traditional DL-based computed tomography (CT) reconstruction methods are patch-based and ignore the consistency of pixels in overlapped patches. In addition, the features learned by these methods always contain shifted versions of the same features. In recent years, convolutional sparse coding (CSC) has been developed to address these problems. In this paper, inspired by several successful applications of CSC in the field of signal processing, we explore the potential of CSC in sparse-view CT reconstruction. By directly working on the whole image, without the necessity of dividing the image into overlapped patches in DL-based methods, the proposed methods can maintain more details and avoid artifacts caused by patch aggregation. With predetermined filters, an alternating scheme is developed to optimize the objective function. Extensive experiments with simulated and real CT data were performed to validate the effectiveness of the proposed methods. Qualitative and quantitative results demonstrate that the proposed methods achieve better performance than several existing state-of-the-art methods.

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