[ 1 ] 郭艳芬,崔喆,杨智鹏,等 . 基于深度学习的医学图像配准技术研究进展[ J ] . 计算机工程与应用, 2021 , 57 ( 15 ): 1-8.[ 2 ] SHI J C , HE Y T , KONG Y Y , et al.Xmorpher : full Transformer for deformable medical image registrationvia cross attention [ C ] ∥Proceedings of the International Conference on Medical Image Computingand Computer-Assisted Intervention ( MICCAI ), 2022 : 217-226.
[ 3 ] SOKOOTI H , VOS B D , BERENDSEN F , et al.Nonrigid image registration using multi-scale 3D convolutional neural networks [ C ] ∥Medical Image Computing and Computer Assisted Intervention ( MICCAI ), 2017 : 232-239.
[ 4 ] MIAO S , WANG Z J , LIAO R.A CNN regression approach for real-time 2D / 3D registration [ J ] .IEEE Transactions on medical imaging , 2016 , 35 ( 5 ): 1352-1363.
[ 5 ] JI H Z , LI Y S , DONG E Q , et al.A non-rigid image registration method based on multi-level B-spline and L2-regularization [ J ] .Signal , image and video processing , 2018 , 12 : 1217-1225.
[ 6 ] KIM H , SONG W J.LAS : Locality-aware scheduling for GEMM-accelerated convolutions in GPUs [ J ] . IEEE Transactions on parallel and distributed systems , 2023 , 34 ( 5 ): 1479-1494.
[ 7 ] GHAHREMANI M , KHATERI M , JIAN B L , et al.H ViT : a hierarchical vision Transformer for deformable image registration [ C ] ∥2024 IEEE / CVF Conference on Computer Vision and Pattern Recognition ( CVPR ), 2024 : 11513-11523.
[ 8 ] ZHANG Y G , PEI Y R , ZHA H B.Learning dual Transformer network for diffeomorphic registration [ C ] ∥ Medical Image Computing and Computer Assisted Intervention ( MICCAI ), 2021 : 129-138.
[ 9 ] LIU Z , LIN Y T , CAO Y , et al.Swin Transformer : hierarchical vision transformer using shifted windows [ C ] ∥IEEE / CVF International Conference on Computer Vision ( ICCV ), 2021 : 9992-10002.
[ 10 ] LIU L H , HUANG Z N , LI? P , et al.You only look at patches : a patch-wise framework for 3D unsupervised medical image registration [ C ] ∥International Workshop on Biomedical Image Registration , 2022 : 190-193.
[ 11 ] CHEN J Y , FREY E C , HE Y F , et al.TransMorph : Transformer for unsupervised medical image registration [ J ] .Medical image analysis , 2022 , 82 : 1-34.
[ 12 ] KIM H H , YU S Z , YUAN S , et al.Cross-attention Transformer for video interpolation [ C ] ∥Proceedings of the Asian Conference on Computer Vision , 2022 : 320-337.
[ 13 ] 邹茂扬,杨昊,潘光晖,等 . 深度学习在医学图像配准上的研究进展与挑战 [ J ] . 生物医学工程学杂志,2019 , 36 ( 4 ): 677-683.
[ 14 ] HERING A , HANSEN L , MOK T C W , et al.Learn2Reg : comprehensive multi-task medical image registration challenge , dataset and evaluation in the era of deep learning [ J ] .IEEE Transactions on medical imaging , 2022 , 42 ( 3 ): 697-712.
[ 15 ] GUO M H , LIU Z N , MU T J , et al.Beyond self-attention : external attention using two linear layers for visual tasks [ J ] .IEEE Transactions on pattern analysis and machine intelligence , 2022 , 45 ( 5 ): 5436-5447.
[ 16 ] CHEN J Y , LIU Y H , HE Y F , et al.Deformable cross-attention Transformer for medical image registration [ C ] ∥International Workshop on Machine Learning in Medical Imaging , 2023 : 115-125.
[ 17 ] KUMTHEKAR A , REDDY G R.An integrated deep learning framework of U-Net and inception modulefor cloud detection of remote sensing images [ J ] .Arabian journal of geosciences , 2021 , 14 ( 18 ): 1900.
[ 18 ] CHEN Y P , DAI X Y , LIU M C , et al.Dynamic convolution : attention over convolution kernels [ C ] ∥Proceedings of the IEEE / CVF Conference on Computer Vision and Pattern Recognition , 2020 : 11030-11039.
[ 19 ] WAN Z H , YANG H , XU J P , et al.BACNN : Multi scale feature fusion-based bilinear attention convolutional neural network for wood NIR classification [ J ] . Journal of forestry research , 2024 , 35 ( 1 ): 1-13.
[ 20 ] MARCUS D S , WANG T H , PARKER J , et al.Open access series of imaging studies ( OASIS ): Cross sectional MRI data in young , middle aged , nondemented , and demented older adults [ J ] .Journal of cognitive neuroscience , 2007 , 19 ( 9 ): 1498-1507.