An improved non-local means algorithm for CT image denoising

Author:

Huihua Kong1,Wenbo Gao1,Yunxia Di1

Affiliation:

1. North University of China

Abstract

Abstract The non-local means (NLM) is a classical image denoising algorithm. However, the denoising effect of the NLM algorithm is easily affected by the noise level of neighboring pixel and image edge information, which leads to poor denoising effect for high noise level image. In this paper, an improved NLM (I-NLM) denoising algorithm is proposed, which can extract the gradient information of the image more accurately by fusing the Laplacian of Gaussian operator. At the same time, the algorithm combines the real domain information and the gradient information of the image to calculate the weight of the similarity between the image blocks. Experimental results show that compared with the traditional NLM algorithm, the proposed I-NLM algorithm can effectively preserve the edge of the image while suppressing the noise, and recover the CT images with high Peak signal-to-noise ratio (PSNR) and SSIM values.

Publisher

Research Square Platform LLC

Reference18 articles.

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