PCANet based nonlocal means method for speckle noise removal in ultrasound images.

Speckle reduction remains a critical issue for ultrasound image processing and analysis. The nonlocal means (NLM) filter has recently attached much attention due to its competitive despeckling performance. However, the existing NLM methods usually determine the similarity between two patches by dire...

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Main Authors: Houqiang Yu, Mingyue Ding, Xuming Zhang, Jinbo Wu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC6185735?pdf=render
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spelling doaj-d6f524c3a0074cd89087c9f4fde146662020-11-25T01:25:28ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-011310e020539010.1371/journal.pone.0205390PCANet based nonlocal means method for speckle noise removal in ultrasound images.Houqiang YuMingyue DingXuming ZhangJinbo WuSpeckle reduction remains a critical issue for ultrasound image processing and analysis. The nonlocal means (NLM) filter has recently attached much attention due to its competitive despeckling performance. However, the existing NLM methods usually determine the similarity between two patches by directly utilizing the gray-level information of the noisy image, which renders it difficult to represent the structural similarity of ultrasound images effectively. To address this problem, the NLM method based on the simple deep learning baseline named PCANet is proposed by introducing the intrinsic features of image patches extracted by this network rather than the pixel intensities into the pixel similarity computation. In this approach, the improved two-stage PCANet is proposed by using Parametric Rectified Linear Unit (PReLU) activation function instead of the binary hashing and block histograms in the original PCANet. This model is firstly trained on the ultrasound database to learn the convolution kernels. Then, the trained PCANet is utilized to extract the intrinsic features from the image patches in the pre-denoised version of the noisy image to be despeckled. These obtained features are concatenated together to determine the structural similarity between image patches in the NLM method, based on which the weighted mean of all pixels in a search window is computed to produce the final despeckled image. Extensive experiments have been conducted on a variety of images to demonstrate the superiority of the proposed method over several well-known despeckling algorithm and the PCANet based NLM method using ReLU function and sigmoid function. Visual inspection indicates that the proposed method outperforms the compared methods in reducing speckle noise and preserving image details. The quantitative comparisons show that among all the evaluated methods, our method produces the best structural similarity index metrics (SSIM) values for the synthetic image, as well as the highest equivalent number of looks (ENL) value for the simulated image and the clinical ultrasound images.http://europepmc.org/articles/PMC6185735?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Houqiang Yu
Mingyue Ding
Xuming Zhang
Jinbo Wu
spellingShingle Houqiang Yu
Mingyue Ding
Xuming Zhang
Jinbo Wu
PCANet based nonlocal means method for speckle noise removal in ultrasound images.
PLoS ONE
author_facet Houqiang Yu
Mingyue Ding
Xuming Zhang
Jinbo Wu
author_sort Houqiang Yu
title PCANet based nonlocal means method for speckle noise removal in ultrasound images.
title_short PCANet based nonlocal means method for speckle noise removal in ultrasound images.
title_full PCANet based nonlocal means method for speckle noise removal in ultrasound images.
title_fullStr PCANet based nonlocal means method for speckle noise removal in ultrasound images.
title_full_unstemmed PCANet based nonlocal means method for speckle noise removal in ultrasound images.
title_sort pcanet based nonlocal means method for speckle noise removal in ultrasound images.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description Speckle reduction remains a critical issue for ultrasound image processing and analysis. The nonlocal means (NLM) filter has recently attached much attention due to its competitive despeckling performance. However, the existing NLM methods usually determine the similarity between two patches by directly utilizing the gray-level information of the noisy image, which renders it difficult to represent the structural similarity of ultrasound images effectively. To address this problem, the NLM method based on the simple deep learning baseline named PCANet is proposed by introducing the intrinsic features of image patches extracted by this network rather than the pixel intensities into the pixel similarity computation. In this approach, the improved two-stage PCANet is proposed by using Parametric Rectified Linear Unit (PReLU) activation function instead of the binary hashing and block histograms in the original PCANet. This model is firstly trained on the ultrasound database to learn the convolution kernels. Then, the trained PCANet is utilized to extract the intrinsic features from the image patches in the pre-denoised version of the noisy image to be despeckled. These obtained features are concatenated together to determine the structural similarity between image patches in the NLM method, based on which the weighted mean of all pixels in a search window is computed to produce the final despeckled image. Extensive experiments have been conducted on a variety of images to demonstrate the superiority of the proposed method over several well-known despeckling algorithm and the PCANet based NLM method using ReLU function and sigmoid function. Visual inspection indicates that the proposed method outperforms the compared methods in reducing speckle noise and preserving image details. The quantitative comparisons show that among all the evaluated methods, our method produces the best structural similarity index metrics (SSIM) values for the synthetic image, as well as the highest equivalent number of looks (ENL) value for the simulated image and the clinical ultrasound images.
url http://europepmc.org/articles/PMC6185735?pdf=render
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