Biomedical image registration : 10th international workshop, WBIR 2022, Munich, Germany, July 10-12, 2022 : proceedings. WBIR (Workshop : 2006- ) (10th : 2022 : Munich, Germany)最新文献

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SuperWarp: Supervised Learning and Warping on U-Net for Invariant Subvoxel-Precise Registration. SuperWarp:在 U-Net 上进行监督学习和翘曲,以实现不变的亚体素精确定位。
Sean I Young, Yaël Balbastre, Adrian V Dalca, William M Wells, Juan Eugenio Iglesias, Bruce Fischl
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引用次数: 0
SuperWarp: Supervised Learning and Warping on U-Net for Invariant Subvoxel-Precise Registration SuperWarp: U-Net上的监督学习和翘曲,用于不变亚体精确配准
Sean I. Young, Yael Balbastre, Adrian V. Dalca, W. Wells, J. E. Iglesias, B. Fischl
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引用次数: 6
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