Sparse deformation prediction using Markove Decision Processes (MDP) for Non-rigid registration of MR image
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Danni Ai | Hong Song | Yongtian Wang | Qin Li | Yong Huang | Jian Yang | Yurong Jiang | Jianjun Zhu | Tianyu Fu | Qin Li | Yongtian Wang | Jian Yang | Danni Ai | Tianyu Fu | Yurong Jiang | Hong Song | Jianjun Zhu | Yong Huang
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