Biomedical Imaging Group
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BIOMEDICAL IMAGING GROUP (BIG)
Laboratoire d'imagerie biomédicale (LIB)
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Students Projects

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GPU accelerated 3D deconvolution

Autumn 2013
Master Semester Project
Project: 00260

00260
In this project our aim is to accelerate a 3D deconvolution algorithm using a Graphical Processing Unit (GPU). In a first part, the student will implement the critical modules of the algorithm in the GPU. After completing this part, the whole deconvolution algorithm will be transferred to the GPU. The student is expected to have good programming skills in C/C++, and motivation to learn about GPU libraries (CUDA or OpenCL depending on available hardware).
  • Supervisors
  • Stamatis Lefkimmiatis, stamatis.lefkimmiatis@epfl.ch, 351 36, BM 4.138
  • Michael Unser, michael.unser@epfl.ch, 021 693 51 75, BM 4.136
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