Article

Adaptive non-local means filtering based on local noise level for CT denoising

Proceedings of SPIE 8313(1):83131H-83131H-10-83131H-83131H-10. ISBN: 0277786X pp.83131H-83131H-10-83131H-83131H-10

ABSTRACT Radiation dose from CT scans is an increasing health concern in the practice of radiology. Higher dose scans can produce clearer images with high diagnostic quality, but may increase the potential risk of radiation-induced cancer or other side effects. Lowering radiation dose alone generally produces a noisier image and may degrade diagnostic performance. Recently, CT dose reduction based on non-local means (NLM) filtering for noise reduction has yielded promising results. However, traditional NLM denoising operates under the assumption that image noise is spatially uniform noise, while in CT images the noise level varies significantly within and across slices. Therefore, applying NLM filtering to CT data using a global filtering strength cannot achieve optimal denoising performance. In this work, we have developed a technique for efficiently estimating the local noise level for CT images, and have modified the NLM algorithm to adapt to local variations in noise level. The local noise level estimation

0 0
 · 
0 Bookmarks
 · 
34 Views

Keywords

applying NLM
 
clearer images
 
CT data
 
CT dose reduction
 
CT images
 
CT scans
 
diagnostic quality
 
Higher dose scans
 
increasing health concern
 
local noise level
 
local noise level estimation
 
NLM algorithm
 
noise level
 
noise level varies
 
noise reduction
 
non-local
 
optimal denoising performance
 
promising results
 
radiation-induced cancer
 
traditional NLM denoising