The State Key Laboratory of Precision Measuring Technology and Instruments, Tianjin University, Tianjin, China.
J Xray Sci Technol. 2024;32(3):549-568. doi: 10.3233/XST-230248.
Projection Domain Decomposition (PDD) is a dual energy reconstruction method which implements the decomposition process before image reconstruction. The advantage of PDD is that it can alleviate beam hardening artifacts and metal artifacts effectively as energy spectra estimation is considered in PDD. However, noise amplification occurs during the decomposition process, which significantly impacts the accuracy of effective atomic number and electron density. Therefore, effective noise reduction techniques are required in PDD.
This study aims to develop a new algorithm capable of minimizing noise while simultaneously preserving edges and fine details.
In this study, a denoising algorithm based on low rank and similarity-based regularization (LRSBR) is presented. This algorithm incorporates the low-rank characteristic of tensors into similarity-based regularization (SBR) framework. This method effectively addresses the issue of instability in edge pixels within the SBR algorithm and enhances the structural consistency of dual-energy images.
A series of simulation and practical experiments were conducted on a dual-layer dual-energy CT system. Experiments demonstrate that the proposed method outperforms exiting noise removal methods in Peak Signal-to-noise Ratio (PSNR), Root Mean Square Error (RMSE), and Structural Similarity (SSIM). Meanwhile, there has been a notable enhancement in the visual quality of CT images.
The proposed algorithm has a significantly improved noise reduction compared to other competing approach in dual-energy CT. Meanwhile, the LRSBR method exhibits outstanding performance in preserving edges and fine structures, making it practical for PDD applications.
投影域分解(PDD)是一种双能重建方法,它在图像重建之前执行分解过程。PDD 的优点是可以有效减轻束硬化伪影和金属伪影,因为 PDD 中考虑了能谱估计。然而,在分解过程中会发生噪声放大,这会显著影响有效原子数和电子密度的准确性。因此,PDD 需要有效的降噪技术。
本研究旨在开发一种能够在最小化噪声的同时保留边缘和细微细节的新算法。
在本研究中,提出了一种基于低秩和基于相似性的正则化(LRSBR)的去噪算法。该算法将张量的低秩特性纳入基于相似性的正则化(SBR)框架中。该方法有效解决了 SBR 算法中边缘像素不稳定的问题,并增强了双能图像的结构一致性。
在双层双能 CT 系统上进行了一系列模拟和实际实验。实验表明,与现有去噪方法相比,所提出的方法在峰值信噪比(PSNR)、均方根误差(RMSE)和结构相似性(SSIM)方面表现更好。同时,CT 图像的视觉质量也有了显著提高。
与其他双能 CT 竞争方法相比,所提出的算法在双能 CT 中具有显著提高的降噪性能。同时,LRSBR 方法在保留边缘和细微结构方面表现出色,适用于 PDD 应用。