Medical Imaging Technology

  • Subject No.
    EE737
  • Research
    Signal
  • Credit
    3
  • Classification
    선택(석/박사)

This course is designed to introduce several medical image systems and related applications based on various image processing techniques. Topics include image reconstruction algorithms, X-ray CT, single photon emission CT, positron emission tomography, magnetic resonance imaging, ultrasound imaging, and related post-processing techniques.

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