DocumentCode :
25863
Title :
ACM-Based Automatic Liver Segmentation From 3-D CT Images by Combining Multiple Atlases and Improved Mean-Shift Techniques
Author :
Hongwei Ji ; Jiangping He ; Xin Yang ; Deklerck, R. ; Cornelis, Jens
Author_Institution :
Inst. of Image Process. & Pattern Recognition, Shanghai Jiao Tong Univ., Shanghai, China
Volume :
17
Issue :
3
fYear :
2013
fDate :
May-13
Firstpage :
690
Lastpage :
698
Abstract :
In this paper, we present an autocontext model (ACM)-based automatic liver segmentation algorithm, which combines ACM, multiatlases, and mean-shift techniques to segment liver from 3-D CT images. Our algorithm is a learning-based method and can be divided into two stages. At the first stage, i.e., the training stage, ACM is performed to learn a sequence of classifiers in each atlas space (based on each atlas and other aligned atlases). With the use of multiple atlases, multiple sequences of ACM-based classifiers are obtained. At the second stage, i.e., the segmentation stage, the test image will be segmented in each atlas space by applying each sequence of ACM-based classifiers. The final segmentation result will be obtained by fusing segmentation results from all atlas spaces via a multi-classifier fusion technique. Specially, in order to speed up segmentation, given a test image, we first use an improved mean-shift algorithm to perform oversegmentation and then implement the region-based image labeling instead of the original inefficient pixel-based image labeling. The proposed method is evaluated on the datasets of MICCAI 2007 liver segmentation challenge. The experimental results show that the average volume overlap error and the average surface distance achieved by our method are 8.3% and 1.5 m, respectively, which are comparable to the results reported in the existing state-of-the-art work on liver segmentation.
Keywords :
computerised tomography; image classification; image fusion; image segmentation; image sequences; learning (artificial intelligence); liver; medical image processing; 3D CT image segmentation; ACM-based automatic liver segmentation algorithm; ACM-based classifier sequence; autocontext model; computed tomography; learning-based method; mean-shift algorithm; multiclassifier fusion technique; multiple atlases; pixel-based image labeling; region-based image labeling; Computed tomography; Context; Feature extraction; Image segmentation; Liver; Shape; Training; Autocontext model (ACM); fuzzy integral; liver segmentation; mean shift; multiclassifier fusion; multiple atlases;
fLanguage :
English
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
Publisher :
ieee
ISSN :
2168-2194
Type :
jour
DOI :
10.1109/JBHI.2013.2242480
Filename :
6419741
Link To Document :
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