EE5561: Image Processing and Applications: From linear filters to artificial intelligence

3 CreditsField StudyOnline Available

Image enhancement, denoising, segmentation, registration, and computational imaging. Sampling, quantization, morphological processing, 2D image transforms, linear filtering, sparsity and compression, statistical modeling, optimization methods, multiresolution techniques, artificial intelligence concepts, neural networks and their applications in classification and regression tasks in image processing. Emphasis is on the principles of image processing. Implementation of algorithms in Matlab/Python and using deep learning frameworks.prereq: [4541, 5581, CSE grad student] or instr consent

View on University Catalog

All Instructors

A- Average (3.577)Most Common: A (41%)

This total also includes data from semesters with unknown instructors.

61 students
SWFDCBA
  • 4.30

    /5

    Recommend
  • 4.37

    /5

    Effort
  • 4.27

    /5

    Understanding
  • 4.32

    /5

    Interesting
  • 4.31

    /5

    Activities


      Contribute on our Github

      Gopher Grades is maintained by Social Coding with data from Summer 2017 to Spring 2024 provided by the Office of Institutional Data and Research

      Privacy Policy