Fang Xu
Research Scientist at Siemens Corporate Research
SPIE Involvement:
Author | Instructor
Publications (3)

Proceedings Article | 14 March 2009 Paper
Proceedings Volume 7258, 72585A (2009) https://doi.org/10.1117/12.813773
KEYWORDS: Visualization, Tomography, Reconstruction algorithms, Iterative methods, Computer programming, Sensors, Data acquisition, Imaging systems, Detection and tracking algorithms, Medical imaging

Proceedings Article | 16 March 2007 Paper
Proceedings Volume 6510, 65105F (2007) https://doi.org/10.1117/12.710445
KEYWORDS: Sensors, Radon, Radon transform, Visualization, Data acquisition, Reconstruction algorithms, Detection and tracking algorithms, Data conversion, Optimization (mathematics), Fourier transforms

Proceedings Article | 28 February 2007 Open Access Paper
Proceedings Volume 6498, 64980N (2007) https://doi.org/10.1117/12.716797
KEYWORDS: Visualization, Sensors, Field programmable gate arrays, Reconstruction algorithms, CT reconstruction, Data modeling, Computed tomography, Computer programming, Data processing, Volume rendering

Course Instructor
SC829: MIC-GPU: High-Performance Computing for Medical Imaging on Programmable Graphics Hardware (GPU)
Advanced graphics boards have become a standard ingredient in any mid-range and high-end PC, and aside from enabling stunning interactive graphics effects in computer games, their rich programmability allows speedups (over CPU-based code) of 1-2 orders of magnitude also in general-purpose computations. This course explains, in gentle ways, how to exploit this powerful computing platform to accelerate various popular medical imaging applications, such as CT, MRI, image processing, and data visualization. It begins by introducing the basic GPU architecture and its programming model, which establishes a solid understanding on how general computing tasks must be structured and implemented on the GPU to achieve the desired high speedups. Next, it examines a number of standard 2D and 3D medical imaging operators, such as filtering, sampling, statistical analysis, transforms, projectors, etc, and explains how these can be effectively accelerated on the GPU. Finally, it puts this all together by describing the full GPU-accelerated computing pipeline for a representative set of medical imaging applications, such as analytical and iterative CT, MRI, image enhancement chains, and volume visualization.
SIGN IN TO:
  • View contact details

UPDATE YOUR PROFILE
Is this your profile? Update it now.
Don’t have a profile and want one?

Advertisement
Advertisement
Back to Top