MMI711 SEQUENCE MODELS IN MULTIMEDIA

Course Code:9090711
METU Credit (Theoretical-Laboratory hours/week):3 (3.00 - 0.00)
ECTS Credit:8.0
Department:Multimedia Informatics
Language of Instruction:English
Level of Study:Graduate
Course Coordinator:
Offered Semester:Fall and Spring Semesters.

Course Objectives

The course will cover various concepts related to the understanding and processing of different types of multimedia sequence models. The course starts with an overview of sequence models, RNNs and continues with details on training RNNs. By introducing different sequence modelling problems, recurrent architectural models and variants of gated recurrent units, the course covers all fundamental concepts related to sequence learning in intelligent multimedia systems. In addition, the course covers the recurrent and nonrecurrent models of attention in various multimedia type signals such as vision and/or sound.


Course Content

The course will cover various concepts related to understanding and processing different types of multimedia sequence models. The course starts with an overview of sequence models, RNNs and continues with details on training RNNs. By introducing different sequence modelling problems, recurrent architectural models and variants of gated units the course covers all fundamental concepts related to sequence learning in intelligent multimedia systems. In addition the course covers the recurrent and nonrecurrent models of attention in various multimedia type signals such as vision and/or sound.


Course Learning Outcomes

Via this course and by the successful completion thereof, the students will:

  • Learn fundamental sequence modelling problems
  • Learn details and use of Recurrent Neural Networks in sequence models
  • Learn short and long term dependency concepts in sequence problems
  • Learn variants of gated recurrent architectures.
  • Learn the concept of recurrent and nonrecurrent models of attention in multimedia signals
  • Learn combinations of RNN based sequence models with conventional machine learning models