Deep Learning Based Medical Image Registration: A Review
YING Shihui1, YANG Wan1, DU Shaoyi2, SHI Jun3
1. Department of Mathematics, College of Sciences, Shanghai Uni-versity, Shanghai 200444 2. Institute of Artificial Intelligence and Robotics, College of Artificial Intelligence, Xi′an Jiaotong University, Xi′an 710049 3. School of Communication and Information Engineering, Shang-hai University, Shanghai 200444
Abstract:Image registration is a key technology in the field of medical image processing and intelligent analysis. The real-time registration cannot be accomplished due to the high complexity and computational cost of traditional registration methods. With the development of deep learning, learning based image registration methods achieve remarkable results. In this paper, the medical image registration methods based on deep learning are systematically summarized and divided into three categories, including supervised learning, unsupervised learning and dual supervised learning. On this basis, the advantages and disadvantages for each category are discussed. Furthermore, the regularization methods proposed in recent years are emphatically discussed, especially based on diffeomorphism and multi-scale regularization. Finally, the medical image registration methods based on deep learning are prospected according to the development trend of the current medical image registration methods.
应时辉, 杨菀, 杜少毅, 施俊. 基于深度学习的医学影像配准综述[J]. 模式识别与人工智能, 2021, 34(4): 287-299.
YING Shihui, YANG Wan, DU Shaoyi, SHI Jun. Deep Learning Based Medical Image Registration: A Review. , 2021, 34(4): 287-299.
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