Mar 06, 2021  
2019-2020 Graduate Catalog 
    
2019-2020 Graduate Catalog [Not Current Academic Year. Consult with Your Academic Advisor for Your Catalog Year]

Add to Portfolio (opens a new window)

ECE 6381 - Sparse Representations for Signal Processing

Credit Hours: 3
Lecture Contact Hours: 3   Lab Contact Hours: 0
Prerequisite: The students are expected to have basic knowledge of Digital Signal Processing or material covered in an equivalent course. Students are also expected to have basic Matlab knowledge.

The course will focus on foundations of multi-resolution analysis and wavelet theory for signal representation. Additionally, the general framework of sparsity (a foundational tool for applications such as compressive sensing, denoising and classification) and structured sparsity will be presented. The course will have a rigorous theoretical component and a hands-on project component where students will apply these techniques to a real-world image analysis problem.



Add to Portfolio (opens a new window)