Multi-modal MRI Image Registration Based on Adaptive Diffeomorphic Multi-Resolution Demons Algorithm
Wang Chang1,2, Ren Qiongqiong1,2, Qin Xin1,2, Liu Yan1, Li Zhenxin1, Yu Yi1,2*
1School of Biomedical Engineering, Xinxiang Medical University, Xinxiang 453003, Henan,China 2Key Lab of Neurosense and Control, Xinxiang Medical University, Xinxiang 453003, Henan,China
Abstract:Diffeomorphic Demons can guarantee the deformation smooth and reversible and avoid producing unreasonable deformation simultaneously. But its iterations need to be set manually and have great impact on registration results. In order to solve this problem, the adaptive diffeomorphic multi-resolution demons was proposed in this paper. Firstly optimization theory framework of non-rigid registration and multi-resolution strategy were used, then similarity energy function based on gray level was designed, and termination condition was set, finally the iteration number was realized adaptively. Check board image, same modality and different modality MRI were tested, quantitative analysis was made using registration evaluation index, and the influence of different driving forces and parameters on registration result were analyzed. Experimental results indicated that, for the same modality of MRI, the mean square error was 514.7965, normalized cross correlation was 0.9993, structural similarity was 0.9948 by this method. For the different modality of MRI, the mean square error was 1354.1, normalized cross correlation was 0.5935, structural similarity was 0.5116. The Mean square error ws the lowest, normalized cross correlation and structural similarity was the highest. In conclusion, this method is effective and robust, showing the application potential in the non-rigid registration of MRI images.
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