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Auteurs principaux: Wu, Qing, Guo, Xu, Chen, Lixuan, Liu, Yanyan, He, Dongming, Wang, Xudong, Chen, Xueli, Zhang, Yifeng, Zhou, S. Kevin, Yu, Jingyi, Zhang, Yuyao
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2405.07047
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author Wu, Qing
Guo, Xu
Chen, Lixuan
Liu, Yanyan
He, Dongming
Wang, Xudong
Chen, Xueli
Zhang, Yifeng
Zhou, S. Kevin
Yu, Jingyi
Zhang, Yuyao
author_facet Wu, Qing
Guo, Xu
Chen, Lixuan
Liu, Yanyan
He, Dongming
Wang, Xudong
Chen, Xueli
Zhang, Yifeng
Zhou, S. Kevin
Yu, Jingyi
Zhang, Yuyao
contents X-ray CT often suffers from shadowing and streaking artifacts in the presence of metallic materials, which severely degrade imaging quality. Physically, the linear attenuation coefficients (LACs) of metals vary significantly with X-ray energy, causing a nonlinear beam hardening effect (BHE) in CT measurements. Reconstructing CT images from metal-corrupted measurements consequently becomes a challenging nonlinear inverse problem. Existing state-of-the-art (SOTA) metal artifact reduction (MAR) algorithms rely on supervised learning with numerous paired CT samples. While promising, these supervised methods often assume that the unknown LACs are energy-independent, ignoring the energy-induced BHE, which results in limited generalization. Moreover, the requirement for large datasets also limits their applications in real-world scenarios. In this work, we propose Density neural representation (Diner), a novel unsupervised MAR method. Our key innovation lies in formulating MAR as an energy-independent density reconstruction problem that strictly adheres to the photon-tissue absorption physical model. This model is inherently nonlinear and complex, making it a rarely considered approach in inverse imaging problems. By introducing the water-equivalent tissues approximation and a new polychromatic model to characterize the nonlinear CT acquisition process, we directly learn the neural representation of the density map from raw measurements without using external training data. This energy-independent density reconstruction framework fundamentally resolves the nonlinear BHE, enabling superior MAR performance across a wide range of scanning scenarios. Extensive experiments on both simulated and real-world datasets demonstrate the superiority of our unsupervised Diner over popular supervised methods in terms of MAR performance and robustness.
format Preprint
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publishDate 2024
record_format arxiv
spellingShingle Solving Energy-Independent Density for CT Metal Artifact Reduction via Neural Representation
Wu, Qing
Guo, Xu
Chen, Lixuan
Liu, Yanyan
He, Dongming
Wang, Xudong
Chen, Xueli
Zhang, Yifeng
Zhou, S. Kevin
Yu, Jingyi
Zhang, Yuyao
Computer Vision and Pattern Recognition
X-ray CT often suffers from shadowing and streaking artifacts in the presence of metallic materials, which severely degrade imaging quality. Physically, the linear attenuation coefficients (LACs) of metals vary significantly with X-ray energy, causing a nonlinear beam hardening effect (BHE) in CT measurements. Reconstructing CT images from metal-corrupted measurements consequently becomes a challenging nonlinear inverse problem. Existing state-of-the-art (SOTA) metal artifact reduction (MAR) algorithms rely on supervised learning with numerous paired CT samples. While promising, these supervised methods often assume that the unknown LACs are energy-independent, ignoring the energy-induced BHE, which results in limited generalization. Moreover, the requirement for large datasets also limits their applications in real-world scenarios. In this work, we propose Density neural representation (Diner), a novel unsupervised MAR method. Our key innovation lies in formulating MAR as an energy-independent density reconstruction problem that strictly adheres to the photon-tissue absorption physical model. This model is inherently nonlinear and complex, making it a rarely considered approach in inverse imaging problems. By introducing the water-equivalent tissues approximation and a new polychromatic model to characterize the nonlinear CT acquisition process, we directly learn the neural representation of the density map from raw measurements without using external training data. This energy-independent density reconstruction framework fundamentally resolves the nonlinear BHE, enabling superior MAR performance across a wide range of scanning scenarios. Extensive experiments on both simulated and real-world datasets demonstrate the superiority of our unsupervised Diner over popular supervised methods in terms of MAR performance and robustness.
title Solving Energy-Independent Density for CT Metal Artifact Reduction via Neural Representation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2405.07047