首页 | 官方网站   微博 | 高级检索  
     

结合先验稀疏字典和空洞填充的CT图像肝脏分割
引用本文:王雪虎,杨健,艾丹妮,王涌天.结合先验稀疏字典和空洞填充的CT图像肝脏分割[J].光学精密工程,2015,23(9):2687-2697.
作者姓名:王雪虎  杨健  艾丹妮  王涌天
作者单位:北京理工大学 光电学院 北京市混合现实与新型显示工程技术研究中心, 北京 100081
基金项目:国家973重点基础研究发展计划资助项目(No.2013CB328806);国家863高技术研究发展计划资助项目(No.2013AA013703);国家十二五科技支撑计划资助项目(No.2013BAI01B01)
摘    要:针对复杂多变的肝脏图像,提出了一种基于先验稀疏字典和空洞填充的三维肝脏图像分割方法。对腹部CT图像进行Gabor特征提取,并分别在Gabor图像和灰度图像的肝脏金标准边界上选择大小相同的图像块作为两组训练集,利用训练集得到两种查询字典及稀疏编码。将金标准图像与待分割图像配准,并将配准后的肝脏边界作为待分割图像的肝脏初始边界;在初始边界点上的十邻域内选择大小相同的两组图像块作为测试样本,利用测试样本与查询字典计算稀疏编码及重构误差,并选择重构误差最小的图像块的中心作为待分割肝脏的边界点;最后,设计一种空洞填充方法对肝脏边界进行补全和平滑处理,得到最终分割结果。利用医学图像计算和计算机辅助介入国际会议中提供的肝脏数据进行了实验验证。结果表明,该方法对肝脏分割图像具有较好的适用性和鲁棒性,并获得了较高的分割精度。其中,平均体积重叠率误差为(5.21±0.45)%,平均相对体积误差为(0.72±0.12)%,平均对称表面距离误差为(0.93±0.14)mm。

关 键 词:计算机层析(CT)图像  肝脏分割  稀疏编码  字典学习  空洞填充
收稿时间:2015-03-07

Liver segmentation in CT image based on priori sparse dictionary and hole filling
WANG Xue-hu,YANG Jian,AI Dan-ni,WANG Yong-tian.Liver segmentation in CT image based on priori sparse dictionary and hole filling[J].Optics and Precision Engineering,2015,23(9):2687-2697.
Authors:WANG Xue-hu  YANG Jian  AI Dan-ni  WANG Yong-tian
Affiliation:Beijing Engineering Research Center for Mixed Reality and Novel Display Technology, School of Optic and Electronic, Beijing Institute of Technology, Beijing 100081, China
Abstract:For complicated liver images, this paper presents a three-dimensional automatic liver segmentation method based on sparse dictionary and hole filling technologies.The Gabor feature of an abdominal CT image was extracted. The image blocks with the same size on the border of liver gold standard in Gabor images and CT images were selected as two groups of train sets. Then, the training sets were used to get the dictionaries and sparse coding. The golden standard image was registered with the image to be segmented, and registered liver boundary was taken as the initial liver boundary of the image to be segmented. Furthermore, two sets of images with the same size were selected as the training sets in ten neighborhoods on the initial boundary. The sparse coding and image reconstruction error were computed by using the testing sets and the block-sparse dictionary, and the final liver boundary with the smallest image reconstruction error was obtained. Finally, a hole filling method was designed for liver boundary completion and smoothing to obtain the final segmentation results. The proposed method for the liver segmentation was evaluated by using the data sets of MICCAI 2007. The results show that this method has better segmentation applicability and robustness for the liver. It shows a higher segmentation accuracy, the volume overlap error rate is reduced to 5.21±0.004 5, the relative volume error is 0.72±0.001 2, and the average symmetric surface distance error is reduced to (0.93±0.14) mm.
Keywords:Computed Tomographic(CT) image  liver segmentation  sparse coding  dictionary learning  hole filling
本文献已被 CNKI 万方数据 等数据库收录!
点击此处可从《光学精密工程》浏览原始摘要信息
点击此处可从《光学精密工程》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司    京ICP备09084417号-23

京公网安备 11010802026262号