Likelihood maximization approach to image registration.

IEEE Transactions on Image Processing(2002)

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摘要
A likelihood maximization approach to image registration is developed in this paper. It is assumed that the voxel values in two images in registration are probabilistically related. The principle of maximum likelihood is then exploited to find the optimal registration: the likelihood that given image f, one has image g and given image g, one has image f is optimized with respect to registration parameters. All voxel pairs in the overlapping volume or a portion of it can be used to compute the likelihood. A knowledge-based method and a self-consistent technique are proposed to obtain the probability relation. In the knowledge-based method, prior knowledge of the distribution of voxel pairs in two registered images is assumed, while such knowledge is not required in the self-consistent method. The accuracy and robustness of the likelihood maximization approach is validated by single modality registration of single photon emission computed tomographic (SPECT) images and magnetic resonance (MR) images and by multimodality registration (MR/SPECT). The results demonstrate that the performance of the likelihood maximization approach is comparable to that of the mutual information maximization technique. Finally the relationship between the likelihood approach and the entropy, conditional entropy, and mutual information approaches is discussed.
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overlapping volume,self-consistent technique,mr/spect,nuclear medicine,knowledge based systems,likelihood maximization approach,spect images,likelihood approach,knowledge-based method,maximum likelihood estimation,image g,registration parameter,mri,mutual information maximization,magnetic resonance images,multimodality registration,conditional entropy,image voxel values,voxel pairs distribution,biomedical mri,diagnostic accuracy,likelihood maximization,maximum likelihood,optimal registration,single photon emission computed tomography,voxel pair,single photon emission computed tomographic images,image registration,mutual information,entropy,medical image processing,probability,registration parameters,magnetic resonance,knowledge base,magnetic resonance imaging,image fusion,computed tomography,hardware,indexing terms
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