Sparse Bayesian registration of medical images for self-tuning of parameters and spatially adaptive parametrization of displacements

Medical Image Analysis - Tập 36 - Trang 79-97 - 2017
Loïc Le Folgoc1,2, Hervé Delingette1, Antonio Criminisi3, Nicholas Ayache1
1Asclepios Research Project, Inria Sophia Antipolis, France
2Microsoft Research – Inria Joint Centre, France
3Machine Learning and Perception Group, Microsoft Research Cambridge, UK

Tài liệu tham khảo

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