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Coarse-to-fine localization of anatomical landmarks in CT images based on multi-scale local appearance and rotation-invariant spatial landmark distribution model.

, , , , , , , и . Medical Imaging: Image Processing, том 8669 из SPIE Proceedings, стр. 866917. SPIE, (2013)

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