School of Science, Tianjin University of Technology and Education, Tianjin, China.
School of Biomedical Engineering and Technology, Tianjin Medical University, Tianjin, China.
J Xray Sci Technol. 2024;32(5):1253-1271. doi: 10.3233/XST-230416.
Low-dose computed tomography (CT) has been successful in reducing radiation exposure for patients. However, the use of reconstructions from sparse angle sampling in low-dose CT often leads to severe streak artifacts in the reconstructed images.
In order to address this issue and preserve image edge details, this study proposes an adaptive orthogonal directional total variation method with kernel regression.
The CT reconstructed images are initially processed through kernel regression to obtain the N-term Taylor series, which serves as a local representation of the regression function. By expanding the series to the second order, we obtain the desired estimate of the regression function and localized information on the first and second derivatives. To mitigate the noise impact on these derivatives, kernel regression is performed again to update the first and second derivatives. Subsequently, the original reconstructed image, its local approximation, and the updated derivatives are summed using a weighting scheme to derive the image used for calculating orientation information. For further removal of stripe artifacts, the study introduces the adaptive orthogonal directional total variation (AODTV) method, which denoises along both the edge direction and the normal direction, guided by the previously obtained orientation.
Both simulation and real experiments have obtained good results. The results of two real experiments show that the proposed method has obtained PSNR values of 34.5408 dB and 29.4634 dB, which are 1.2392-5.9333 dB and 2.828-6.7995 dB higher than the contrast denoising algorithm, respectively, indicating that the proposed method has good denoising performance.
The study demonstrates the effectiveness of the method in eliminating strip artifacts and preserving the fine details of the images.
低剂量 CT 已成功降低了患者的辐射暴露。然而,在低剂量 CT 中使用稀疏角度采样的重建往往会导致重建图像中出现严重的条纹伪影。
为了解决这个问题并保留图像边缘细节,本研究提出了一种基于核回归的自适应正交方向全变分方法。
首先对 CT 重建图像进行核回归处理,得到 N 项泰勒级数,作为回归函数的局部表示。通过将级数展开到二阶,得到回归函数的期望估计和一阶和二阶导数的局部信息。为了减轻导数上噪声的影响,再次进行核回归以更新一阶和二阶导数。然后,使用加权方案将原始重建图像、局部逼近和更新后的导数相加,得到用于计算方向信息的图像。为了进一步去除条纹伪影,本研究引入了自适应正交方向全变分(AODTV)方法,该方法在先前获得的方向的指导下,沿边缘方向和法向进行去噪。
模拟和真实实验均取得了良好的结果。两个真实实验的结果表明,所提出的方法获得了 34.5408 dB 和 29.4634 dB 的 PSNR 值,分别比对比去噪算法高 1.2392-5.9333 dB 和 2.828-6.7995 dB,表明该方法具有良好的去噪性能。
该研究证明了该方法在消除条纹伪影和保留图像细节方面的有效性。