首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.6 no.24 >Sinogram noise reduction for low-dose CT by statistics-based nonlinear filters
【24h】

Sinogram noise reduction for low-dose CT by statistics-based nonlinear filters

机译:基于统计的非线性滤波器降低小剂量CT的正弦噪声

获取原文
获取原文并翻译 | 示例

摘要

Low-dose CT (computed tomography) sinogram data have been shown to be signal-dependent with an analytical relationship between the sample mean and sample variance. Spatially-invariant low-pass linear filters, such as the Butterworth and Hanning filters, could not adequately handle the data noise and statistics-based nonlinear filters may be an alternative choice, in addition to other choices of minimizing cost functions on the noisy data. Anisotropic diffusion filter and nonlinear Gaussian filters chain (NLGC) are two well-known classes of nonlinear filters based on local statistics for the purpose of edge-preserving noise reduction. These two filters can utilize the noise properties of the low-dose CT sinogram for adaptive noise reduction, but can not incorporate signal correlative information for an optimal regularized solution. Our previously-developed Karhunen-Loeve (KL) domain PWLS (penalized weighted least square) minimization considers the signal correlation via the KL strategy and seeks the PWLS cost function minimization for an optimal regularized solution for each KL component, i.e., adaptive to the KL components. This work compared the nonlinear filters with the KL-PWLS framework for low-dose CT application. Furthermore, we investigated the nonlinear filters for post KL-PWLS noise treatment in the sinogram space, where the filters were applied after ramp operation on the KL-PWLS treated sinogram data prior to backprojection operation (for image reconstruction). By both computer simulation and experimental low-dose CT data, the nonlinear filters could not outperform the KL-PWLS framework. The gain of post KL-PWLS edge-preserving noise filtering in the sinogram space is not significant, even the noise has been modulated by the ramp operation.
机译:小剂量CT(计算机断层扫描)正弦图数据已被证明是信号相关的,并且样本均值和样本方差之间存在解析关系。空间不变的低通线性滤波器(例如Butterworth和Hanning滤波器)无法充分处理数据噪声,除了将噪声数据的成本函数最小化的其他选择之外,基于统计的非线性滤波器可能是替代选择。各向异性扩散滤波器和非线性高斯滤波器链(NLGC)是两类众所周知的基于局部统计量的非线性滤波器,目的是减少边缘噪声。这两个滤波器可以利用低剂量CT正弦图的噪声属性进行自适应降噪,但不能将信号相关信息纳入最佳正则化解决方案。我们先前开发的Karhunen-Loeve(KL)域PWLS(惩罚加权最小二乘)最小化考虑了通过KL策略的信号相关性,并针对每个KL分量寻求最优正则化解决方案的PWLS成本函数最小化,即适应KL组件。这项工作将非线性滤波器与KL-PWLS框架用于低剂量CT应用进行了比较。此外,我们研究了在正弦图空间中用于KL-PWLS后噪声处理的非线性滤波器,其中在反投影操作(用于图像重建)之前对KL-PWLS处理过的正弦图数据进行斜坡运算之后应用了这些滤波器。通过计算机仿真和实验性低剂量CT数据,非线性滤波器均不能胜过KL-PWLS框架。在正弦图空间中,后期KL-PWLS保留边缘后的噪声滤波的增益并不显着,即使噪声已通过斜坡操作进行了调制。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号