Course title
映像情報学特論   [Advanced Image Information Studies]
Course category courses for master's programs  Requirement   Credit 2 
Department   Year   Semester 3rd 
Course type 3rd  Course code 1060611
Instructor(s)
堀田 政二   [HOTTA Seiji]
Facility affiliation Faculty of Engineering Office afjgxte/L1151  Email address

Course description
This course aims to introduce recent technics for understanding multimedia information (image, audio, video, and text) by a machine. We will examine popular machine learning techniques with some practice problems for understanding of these topics. Hence, prepare your laptop for every class.

This course is designed to give an overview of various basic machine learning methods for understanding multimedia information. The course will give students an overall understanding of these fields and would make them realize that machine learning plays important roles in information technologies. The course will be based on lectures, discussions, and doing small projects (active learning style).
Expected Learning
Learners who complete this course will be able to understand:
- multimedia information,
- applications for multimedia,
- techniques for machine learning.

Corresponding criteria in the Diploma Policy:
See the Curriculum maps (Department of Computer and Information Sciences, diploma policy type A).
Course schedule
1. Introduction
schedule, importance of media understanding with machines, preparation
2. Paper selection I
lecture for reading technical papers in English
3. Paper selection II
explanation of technical terms
4. Paper selection III
theme selection
5. History of object recognition
implementation
6. Object detection and recognition I
image understanding with computer vision, implementation
7. Object detection and recognition II
similarity search of multimedia, implementation
8. Image categorization I
feature vector, implementation
9. Image categorization II
classification with machine learning, implementation
10. Image categorization II
image understanding with contexts, experiments
11. Image segmentation
clustering, experiments
12. Geometric invariance for image recognition
experiments
13. Deep learning for image classification
experiments
14. Conclusions
summarization of advanced image information
15. Final presentation and report submission
Prerequisites
This lecture is part of the courses in the department of computer and information science. In addition to 30 hours that students spend in the class, and they are recommended to spend 60 hours for preparing and revising the lectures.
Required Text(s) and Materials
Prints are distributed in the lecture.
References
Papers selected by yourself.
Assessment/Grading
Report (50%) and Presentation (50%)
Message from instructor(s)
I want students to develop a deeper understanding of multimedia understanding with machines that will be a basic technology for future world. I would also like to encourage students to design their researches based on the knowledge given via this lecture.
Course keywords
image, video, segmentation, recognition, machine learning
Office hours
From 10:00 to 12:00 on Monday. Also, students can contact the chief instructor via e-mail.
Remarks 1
Remarks 2
Related URL
http://www.tuat.ac.jp/~s-hotta/IR/
Lecture Language
Japanese
Language Subject
Last update
2/27/2020 12:04:00 PM