成像体模
图像分辨率
探测器
计算机断层摄影术
分辨率(逻辑)
迭代重建
计算机科学
断层摄影术
协议(科学)
算法
采样(信号处理)
计算机视觉
人工智能
核医学
光学
物理
放射科
医学
病理
电信
替代医学
作者
Li Li,Jiahui He,Yunxin Tang,Youjian Zhang,Jie Wang,Guan‐Qun Zhou,Zhicheng Zhang
标识
DOI:10.1109/icassp48485.2024.10446113
摘要
Computed Tomography (CT) is an advanced imaging technology. To obtain high-resolution (HR) CT images from low-resolution (LR) sinograms, we present a deep-learning (DL) based CT super-resolution (SR) method.The proposed method combines a SR model in the sinogram domain and the iterative framework into a CT SR algorithm. We unrolled the proposed method into a DL network (SRECT-Net) for adaptive estimation of inherent blurring effects causing by the insufficient sampling of LR X-Ray detector. For CT systems, if the scanning protocol is fixed, the system blur effect will remain relatively stable. Inspired by this fact, the proposed methods can be pre-trained with amounts of simulated datasets, effectively fine-tuned with just a single sample, and then obtain a machine-specific SR model. The proposed SRECT was evaluated via SR CT imaging of a Catphan 700 phantom and a ham, whose performance was compared to the other DL-based CT SR methods. The results show that the proposed SRECT can provide a CT SR reconstruction performance superior to the other state-of-the-art CT SR methods, demonstrating the potential use in improving CT resolution beyond its hardware limit, lowering the requirement of CT hardware, or reducing X-Ray dose during CT imaging.
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