%0 Journal Article %T Medical image segmentation based on statistical similarity feature
统计相似度特征的医学图像分割 %A Guo Yanrong %A Jiang Jianguo %A Hao Shijie %A Zhan Shu %A Li Hong %A
郭艳蓉 %A 蒋建国 %A 郝世杰 %A 詹曙 %A 李鸿 %J 中国图象图形学报 %D 2013 %I %X A common point of partial differential equation and graph theory based image segmentation methods lies in creating and optimizing their energy functions. From the viewpoint of creating energy models, statistical image features from nonparametric estimation are measured with Bhattacharyya metrics, which is further embedded into energy function construction in Geodesic Active Contour (GAC)and Graph Cuts (GC)models in this paper. The improved GAC and GC models benefit from the energy function based on the aforementioned metric, which introduces a pull-back strength into the GAC to prevent boundary leaking and to help the GC model in accurately estimating the distribution from small samples and unstable distribution function as well as extracting objects in more detail. Then, the proposed methods are applied to the medical image segmentation scenario and a bone and meniscus segmentation framework on knee MRI sequence is presented. In the experimental section, quantitative and qualitative comparisons are conducted respectively. Experimental results show the increased precision of our method in segmenting medical images such as knee MRI sequences, which are affected by the noise and the partial volume effect. %K active contour model %K graph cuts %K Bhattacharyya distance %K nonparametric estimation %K knee image segmentation
主动轮廓模型 %K 图切分 %K Bhattacharyya距离 %K 非参数估计 %K 膝关节图像分割 %U http://www.alljournals.cn/get_abstract_url.aspx?pcid=5B3AB970F71A803DEACDC0559115BFCF0A068CD97DD29835&cid=8240383F08CE46C8B05036380D75B607&jid=D06194629680C940ACE75262F54B9D85&aid=AE8DAD4245F3E9A9B11A9BBA8AEA38F1&yid=FF7AA908D58E97FA&vid=13553B2D12F347E8&iid=0B39A22176CE99FB&sid=4966445AEEBA9556&eid=D9AE183D3F5C3C75&journal_id=1006-8961&journal_name=中国图象图形学报&referenced_num=0&reference_num=0