DocumentCode :
3205739
Title :
Joint prior models of neighboring objects for 3D image segmentation
Author :
Yang, Jing ; Duncan, James S.
Author_Institution :
Dept. of Electr. Eng., Yale Univ., New Haven, CT, USA
Volume :
1
fYear :
2004
fDate :
27 June-2 July 2004
Abstract :
This paper presents a novel method for 3D image segmentation, where a Bayesian formulation, based on joint prior knowledge of multiple objects, along with information derived from the input image, is employed. Our method is motivated by the observation that neighboring structures have consistent locations and shapes that provide configurations and context that aid in segmentation. In contrast to the work presented earlier, we define a maximum a posteriori (MAP) estimation model using the joint prior information of the multiple objects to realize image segmentation, which allows multiple objects with clearer boundaries to be reference objects to provide constraints in the segmentation of difficult objects. To achieve this, multiple signed distance functions are employed as representations of the objects in the image. We introduce a representation for the joint density function of the neighboring objects, and define joint probability distribution over the variations of objects contained in a set of training images. By estimating the MAP shapes of the objects, we formulate the joint shape prior models in terms of level set functions. We found the algorithm to be robust to noise and able to handle multidimensional data. Furthermore, it avoids the need for point correspondences during the training phase. Results and validation from various experiments on 2D/3D medical images are demonstrated.
Keywords :
Bayes methods; Gaussian distribution; data handling; image representation; image segmentation; information theory; maximum likelihood estimation; medical image processing; set theory; 2D medical images; 3D image segmentation; 3D medical images; Bayesian formulation; MAP estimation model; joint density function; joint prior information; joint probability distribution; joint shape prior models; level set functions; maximum a posteriori estimation model; multidimensional data handling; multiple signed distance functions; neighboring multiobject joint model; neighboring structure; object image representation; training image set; Bayesian methods; Biomedical imaging; Density functional theory; Image segmentation; Level set; Multi-stage noise shaping; Multidimensional systems; Noise robustness; Probability distribution; Shape;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition, 2004. CVPR 2004. Proceedings of the 2004 IEEE Computer Society Conference on
ISSN :
1063-6919
Print_ISBN :
0-7695-2158-4
Type :
conf
DOI :
10.1109/CVPR.2004.1315048
Filename :
1315048
Link To Document :
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