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Adaptive Convolutional Dictionary Network for CT Metal Artifact Reduction

About

Inspired by the great success of deep neural networks, learning-based methods have gained promising performances for metal artifact reduction (MAR) in computed tomography (CT) images. However, most of the existing approaches put less emphasis on modelling and embedding the intrinsic prior knowledge underlying this specific MAR task into their network designs. Against this issue, we propose an adaptive convolutional dictionary network (ACDNet), which leverages both model-based and learning-based methods. Specifically, we explore the prior structures of metal artifacts, e.g., non-local repetitive streaking patterns, and encode them as an explicit weighted convolutional dictionary model. Then, a simple-yet-effective algorithm is carefully designed to solve the model. By unfolding every iterative substep of the proposed algorithm into a network module, we explicitly embed the prior structure into a deep network, \emph{i.e.,} a clear interpretability for the MAR task. Furthermore, our ACDNet can automatically learn the prior for artifact-free CT images via training data and adaptively adjust the representation kernels for each input CT image based on its content. Hence, our method inherits the clear interpretability of model-based methods and maintains the powerful representation ability of learning-based methods. Comprehensive experiments executed on synthetic and clinical datasets show the superiority of our ACDNet in terms of effectiveness and model generalization. {\color{blue}{{\textit{Code is available at {\url{https://github.com/hongwang01/ACDNet}}.}}}}

Hong Wang, Yuexiang Li, Deyu Meng, Yefeng Zheng• 2022

Related benchmarks

TaskDatasetResultRank
Metal Artifact ReductionDeepLesion synthesized (Medium Metal)
PSNR (dB)44.19
19
Metal Artifact ReductionDeepLesion 43 (test)
PSNR38.19
10
Metal Artifact ReductionSynthesized DeepLesion Large Metal Subset 1
PSNR42.13
10
Metal Artifact ReductionSynthesized DeepLesion Large Metal Subset 2
PSNR43.17
10
Metal Artifact ReductionSynthesized DeepLesion Small Metal Subset 1
PSNR45.23
10
Metal Artifact ReductionSynthesized DeepLesion Small Metal Subset 2
PSNR46.21
10
Metal Artifact ReductionSynthesized DeepLesion Average
PSNR44.19
10
Metal Artifact ReductionXCOM 44 (test)
PSNR33.04
10
Metal Artifact ReductionClinical dental CBCT data from the First Affiliated Hospital of Nanchang University
STD (HU)33.69
6
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