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基于NSST域卷积神经网络的低剂量CT图像恢复
引用本文:刘祎,高净植,桂志国.基于NSST域卷积神经网络的低剂量CT图像恢复[J].计算机工程与应用,2019,55(23):209-215.
作者姓名:刘祎  高净植  桂志国
作者单位:中北大学 山西省生物医学成像与影像大数据重点实验室,太原,030051;中北大学 山西省生物医学成像与影像大数据重点实验室,太原,030051;中北大学 山西省生物医学成像与影像大数据重点实验室,太原,030051
基金项目:国家自然科学基金;山西省青年基金;山西省回国留学人员科研资助项目;山西省"1331工程"重点创新团队建设计划
摘    要:为解决低剂量CT(Low-Dose Computed Tomography,LDCT)图像中的噪声/伪影问题,提出一种基于非下采样Shearlet变换(Non-Sample Shearlet Transformation,NSST)的卷积神经网络(Convolution Neural Network,CNN)的NSST-CNN模型。训练时,对数据集中的常规剂量CT(Normal-Dose Computed Tomography,NDCT)和LDCT图像做NSST分解,将LDCT图像的高频子图作为输入,LDCT和NDCT图像的高频子图的残差图像作为标签,通过CNN训练,学习LDCT高频子图和高频残差子图的映射关系;测试时,将LDCT图像的高频子图减去利用映射关系预测的主要包括噪声/伪影的高频子图,然后做NSST反变换得到高质量的LDCT图像。实验结果表明,与KSVD、BM3D以及图像域CNN方法相比,NSST-CNN模型得到的结果具有更高的峰值信噪比和结构相似度,更接近NDCT图像。

关 键 词:低剂量CT  图像恢复  非下采Shearlet变换  卷积神经网络  残差学习

Low-Dose CT Restoration Based on CNN in NSST Domain
LIU Yi,GAO Jingzhi,GUI Zhiguo.Low-Dose CT Restoration Based on CNN in NSST Domain[J].Computer Engineering and Applications,2019,55(23):209-215.
Authors:LIU Yi  GAO Jingzhi  GUI Zhiguo
Affiliation:Shanxi Provincial Key Laboratory for Biomedical Imaging and Big Data, North University of China, Taiyuan 030051, China
Abstract:In order to solve the noise/artifact problem in Low-Dose Computed Tomography(LDCT) images, a Convolution Neural Network(CNN) based on Non-Sample Shearlet Transformation(NSST), NSST-CNN model, is proposed in this paper. During training, NSST decomposition is performed on Normal-Dose Computed Tomography(NDCT) and LDCT images in the data set. The high-frequency sub-images of LDCT are used as the input, and the residual images of the high-frequency sub-images of NDCT and LDCT are used as the label. The mapping relationship between sub-images of LDCT and high-frequency sub-images of the residual images is then learned through CNN training. When testing, the high-frequency sub-images of LDCT are subtracted from the trained noise/artifact and the inverse NSST transform is performed to obtain a high-quality LDCT image. Experimental results show that NSST-CNN achieves a better balance between suppressing artifacts/noise and protecting structural details than KSVD, BM3D, and image space CNN method.
Keywords:low-dose Computed Tomography(CT)  image restoration  non-sample Shearlet transformation  convolutional neural network  residual learning  
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