This is a preview of subscription content, log in to check access.
Buy single article
Instant access to the full article PDF.
Price includes VAT for USA
Zhang C. Research on the theory of data visualization in the age of large data. Beauty Times, 2017, 76: 7
Wang Q R, Tao Y B, Zhou Z G, et al. Semantic lens: a visualization and inspection tool for multi-volume data (in Chinese). J Comput-Aided Des Comput Graph, 2015, 27: 1675–1685
Seemann M D, Beltle J, Heuschmid M, et al. Image fusion of CT and MRI for the visualization of the auditory and vestibular system. Eur J Med Res, 2005, 47–55
Bramon R, Boada I, Bardera A, et al. Multimodal data fusion based on mutual information. IEEE Trans Visual Comput Graph, 2012, 18: 1574–1587
Bramon R, Ruiz M, Bardera A, et al. Information theory-based automatic multimodal transfer function design. IEEE J Biomed Health Inform, 2013, 17: 870–880
Liao X, Guo W. PET/CT three-dimensional fusion algorithm based on gray difference (in Chinese). J Sci Tech Eng, 2013, 14: 4066–4069
Taylor R M. Visualizing multiple fields on the same surface. IEEE Comput Grap Appl, 2002, 22: 6–10
Kuhne L, Giesen J, Zhang Z, et al. A data-driven approach to hue-preserving color-blending. IEEE Trans Visual Comput Graph, 2012, 18: 2122–2129
Luo Y L. Distance-based focus + context models for exploring large volumetric medical datasets. Comput Sci Eng, 2012, 14: 63–71
About this article
Cite this article
He, Z., Zhu, L., Li, M. et al. Rapid and high-quality 3D fusion of heterogeneous CT and MRI data for the human brain. Sci. China Inf. Sci. 62, 204101 (2019). https://doi.org/10.1007/s11432-018-9740-7