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2025 (Current Year) Faculty Courses School of Engineering Department of Information and Communications Engineering Graduate major in Information and Communications Engineering

Advanced Communication System Engineering

Academic unit or major
Graduate major in Information and Communications Engineering
Instructor(s)
Undecided
Class Format
Lecture
Media-enhanced courses
-
Day of week/Period
(Classrooms)
Class
-
Course Code
ICT.C412
Number of credits
200
Course offered
2025
Offered quarter
3Q
Syllabus updated
Apr 10, 2025
Language
Japanese

Syllabus

Course overview and goals

Modern information and communication technology has been developing together with rapidly evolving data science and AI technology. In this lecture, we invite front-line researchers in leading industries as lecturers to outline the current status and issues of the latest R & D in these integrated areas.

Course description and aims

1) Students will understand advanced technologies developed in the information and communication industry and future trends.
2) Students will understand the outline and basic principles of acoustic processing, image processing, and image recognition, and how they are applied in modern human society.
3) Students will understand the outline and basic principles of artificial intelligence, machine learning, and data science, and understand how society and life are being transformed.

Keywords

Pattern recognition, coding, video information compression, MPEG, audio processing, deep learning, internal understanding, object fingerprint, face recognition, person recognition, Artificial intelligence, machine learning, data mining, discovery science, simulation, optimization

Competencies

  • Specialist skills
  • Intercultural skills
  • Communication skills
  • Critical thinking skills
  • Practical and/or problem-solving skills

Class flow

The first half of this course will be presented by instructors from the NEC central research laboratories. The second half of this course will be presented by instructors from the Fujitsu laboratories. In the class, the teaching material is projected on the screen. Through the Questions and Answers, the correct and deep understanding is enhanced.

Course schedule/Objectives

Course schedule Objectives
Class 1 Pattern recognition and its applications Understand an overview of pattern recognition technology and recent application examples centered on video recognition
Class 2 Video processing technologies for human recognition and their application Learn about video-based person recognition technology, mainly face recognition, and understand its challenges and application examples.
Class 3 Real world recognition technology and its applications Learn about real-world recognition technology that digitizes the status of specified people and things from images and videos, and understand its challenges and application examples
Class 4 Deep learning using sensing technology and its applications Learn the basics of image sensing technology and deep learning, and understand their application examples
Class 5 Human internal state estimation technology and its applications Learn the basics of technology that estimates people's internal states such as stress and emotions, and understand its application examples and the latest trends
Class 6 Acoustic/speech/language processing technology and its applications Understand acoustic/speech/language processing technology and its application examples
Class 7 Video compression coding technology Understand the basic principles of video information compression and transmission, focusing on the international standard MPEG technology
Class 8 Overview of the artificial intelligence Understand the overview of of the artificial inteligence
Class 9 Overview of the data mining and the discovery science Understand the overview of the data mining and the discovery science
Class 10 Overview of the machine learning Understand the idea behind the machine learning and its applications specially based on the Deep learning
Class 11 Overview of the natural language processing Understand the overview of natural language processing and its applications
Class 12 Overview of the simulation AI Understand the overview of the simulation AI and applications
Class 13 Overview of the mathematical optimization 1 Understand the overview of mathematical optimization and its applications in data science
Class 14 Overview of the mathematical optimization 2 Understand recent advancements of mathematical optimizations and their algorithms

Study advice (preparation and review)

To enhance effective learning, students are encouraged to spend approximately 100 minutes preparing for class and another 100 minutes reviewing class content afterwards (including assignments) for each class.
They should do so by referring to textbooks and other course material.

Textbook(s)

Not specified

Reference books, course materials, etc.

All course materials will be provided in each class.

Evaluation methods and criteria

Learning achievement is evaluated by the quality of the written reports on specific themes.

Related courses

  • ICT.C205 : Communication Theory (ICT)
  • ZUS.M303 : Digital Communications
  • ICT.S403 : Multidimensional Information Processing
  • ICT.S206 : Signal and System Analysis
  • ICT.S414 : Advanced Signal Processing (ICT)
  • ICT.C201 : Introduction to Information and Communications Engineering
  • ICT.A402 : Communications and Computer Engineering I
  • ICT.H318 : Foundations of Artificial Intelligence (ICT)
  • ICT.S311 : Machine Learning (ICT)
  • ICT.S302 : Functional Analysis and Inverse Problems

Prerequisites

Not specified

Contact information (e-mail and phone) Notice : Please replace from ”[at]” to ”@”(half-width character).

isao[at]ict.e.titech.ac.jp

Office hours

Students may approach the instructors at the end of class upon securing an appointment through e-mail.