计算机科学
图像配准
人工智能
体素
特征(语言学)
嵌入
模式识别(心理学)
特征向量
计算
计算机视觉
算法
图像(数学)
哲学
语言学
作者
Zi Li,Tong Lin,Tony C. W. Mok,Xiaoyu Bai,Puyang Wang,Jia Ge,Jingren Zhou,Le Lü,Xianghua Ye,Ke Yan,Dakai Jin
标识
DOI:10.1007/978-3-031-43999-5_53
摘要
Estimating displacement vector field via a cost volume computed in the feature space has shown great success in image registration, but it suffers excessive computation burdens. Moreover, existing feature descriptors only extract local features incapable of representing the global semantic information, which is especially important for solving large transformations. To address the discussed issues, we propose SAMConvex, a fast coarse-to-fine discrete optimization method for CT registration that includes a decoupled convex optimization procedure to obtain deformation fields based on a self-supervised anatomical embedding (SAM) feature extractor that captures both local and global information. To be specific, SAMConvex extracts per-voxel features and builds 6D correlation volumes based on SAM features, and iteratively updates a flow field by performing lookups on the correlation volumes with a coarse-to-fine scheme. SAMConvex outperforms the state-of-the-art learning-based methods and optimization-based methods over two inter-patient registration datasets (Abdomen CT and HeadNeck CT) and one intra-patient registration dataset (Lung CT). Moreover, as an optimization-based method, SAMConvex only takes $${\sim }2$$ s ( $${\sim }5$$ s with instance optimization) for one paired images.
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