Hierarchical MRF of globally consistent localized classifiers for 3D medical image segmentation

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摘要

A suitable object model is crucial in guiding an object segmentation method of three-dimensional medical images to avoid difficulties such as complex object structures, inter-subject variability and ambiguous boundaries between organs. The main challenge is to make the model sufficiently complex to represent a wide range of variations effectively, while maintaining compatibility with the segmentation methodology. To address this problem, we propose a new segmentation method based on a hierarchical Markov random field (H-MRF). The H-MRF is composed of local-level MRFs based on adaptive local priors which model local variations of shape and appearance and a global-level MRF enforcing consistency of the local-level MRFs. The proposed method can successfully model large object variations and weak boundaries and is readily combined with well-established MRF optimization techniques. Furthermore, it works well with limited training data and does not require a complex training model or non-rigid registration. The performance of the proposed method is evaluated for bone and cartilage from knee magnetic resonance (MR) images, the liver from body computed tomography images, and the hippocampus from brain MR images. Both qualitative and quantitative evaluations demonstrate that the proposed method provides robust and accurate segmentation results.

论文关键词:Segmentation,Hierarchical Markov random field,Medical image analysis,Discrete optimization,Local and global prior

论文评审过程:Received 10 July 2012, Revised 29 January 2013, Accepted 20 February 2013, Available online 5 March 2013.

论文官网地址:https://doi.org/10.1016/j.patcog.2013.02.014