Course title
生体モデル知覚システム特論Ⅱ   [Advanced Bio-modeled Sensory Systems Ⅱ]
Course category interdisciplinary exchange courses  Requirement   Credit 1 
Department   Year   Semester 1st 
Course type 1st  Course code 112118
Instructor(s)
田中 雄一   [TANAKA Yuichi]
Facility affiliation Faculty of Engineering Office afjgxte/L1151  Email address

Course description
This 1-credit course introduces theory and applications of emerging tools for signal processing on graphs, including a review of spectral graph theory, filtering of graph signals, downsampling, and wavelets and filter banks. This course corresponds to the specialized advanced courses of the curriculum of the Department of Bio-Functions and Systems Science.
Expected Learning
Learners who successfully complete this course will be able to:

1. Understand the motivation of graph signal processing
2. Understand basic spectral graph theory
3. Understand and implement a few operations of graph signal processing

Corresponding criteria in the Diploma Policy: See the Curriculum maps.
Course schedule
1. Introduction of graph signal processing
2. Review of spectral graph theory and linear algebra
3. Adjacency matrix and graph Laplacian
4. Graph signals and graph Fourier transform
5. Graph filtering
6. Downsampling and oversampling of graph signals
7. Applications for image processing
8. Summary
Prerequisites
Students entering this class are assumed to have had linear algebra and signal processing in undergraduate level. A basic knowledge of graph theory is plus. Basic skills of programming language, e.g, MATLAB, python, or C++ (OpenCV) are required. In addition to the 16 hours of class time, refer to handouts and other materials, prepare and review for the standard number of hours set by the university.
Required Text(s) and Materials
Handouts are provided.
References
More references will be introduced during the class.
G. Strang, Linear algebra and its applications, 4th ed., Cengage Learning, 2005.
F. R. Chung, Spectral graph theory, volume92, AMS Bookstore, 1997.
D. K. Hammond, P. Vandergheynst, and R. Gribonval. Wavelets on graphs via spectral graph theory. Applied and Computational Harmonic Analysis , 30(2):129-150, 2011.
D. I. Shuman, S. K. Narang, P. Frossard, A. Ortega, and P. Vandergheynst. The emerging field of signal processing on graphs: Extending high-dimensional data analysis to networks and other irregular domains. Signal Processing Magazine, IEEE , 30(3):83-98, 2013.
D. Spielman, Spectral graph theory, Lecture Notes, Yale University, 2009.
Assessment/Grading
Final project: 70%
Reports of graph signal processing: 30%
Message from instructor(s)
Course keywords
Office hours
Email to the instructor.
Remarks 1
Remarks 2
Related URL
Lecture Language
Japanese
Language Subject
Last update
3/25/2020 10:25:43 AM