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Detail- Revealing Deep Low-Dose CT Reconstruction

机译:细节 - 揭示深低剂量CT重建

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Low-dose CT imaging emerges with low radiation risk due to the reduction of radiation dose, but brings negative impact on the imaging quality. This paper addresses the problem of low-dose CT reconstruction. Previous methods are unsatisfactory due to the inaccurate recovery of image details under the strong noise generated by the reduction of radiation dose, which directly affects the final diagnosis. To suppress the noise effectively while retain the structures well, we propose a detail-revealing dual-branch aggregation network to effectively reconstruct the degraded CT image. Specifically, the main reconstruction branch iteratively exploits and compensates the reconstruction errors to gradually refine the CT image, while the prior branch is to learn the structure details as prior knowledge to help recover the CT image. A sophisticated detail-revealing loss is designed to fuse the information from both branches and guide the learning to obtain better performance from pixel-wise and holistic perspectives respectively. Experimental results show that our method outperforms the state-of-art methods in both PSNR and SSIM metrics.
机译:由于辐射剂量的还原,低剂量CT成像具有低辐射风险,但为成像质量带来负面影响。本文解决了低剂量CT重建问题。由于在减少辐射剂量减少的辐射剂量下产生的强烈噪声下的图像细节的不准确性,之前的方法是不令人满意的,这直接影响最终诊断。为了有效地抑制噪声,同时保持结构良好,我们提出了一个细节的双分支聚合网络,以有效地重建降级的CT图像。具体地,主要重建分支迭代地利用并补偿重建误差逐渐细化CT图像,而先前的分支是将结构细节作为先验知识,以帮助恢复CT图像。精致的细节泄露损失旨在使来自两个分支机构的信息融合并引导学习,以分别从像素 - 明智和整体透视图获得更好的性能。实验结果表明,我们的方法优于PSNR和SSIM度量中的最先进方法。

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