Skip navigation

ENGN8531 Advanced Research Topics in Computer Vision

ENGN8531 is only available under certain award programs.

Offered By Dept Engineering
Academic Career Graduate Coursework
Course Subject Engineering
Offered in ENGN8531 will not be offered in 2009
Unit Value 6 units
Course Description

Computer Vision is the study of inferring properties of the 3D world based on one or more 2D digital images or video sequences.

This is an advanced course on Computer Vision and Pattern Recognition.  It is designed to broaden the knowledge base and enhance the research skills of the students by familiarizing them to the most recent,  most advanced and very active research topics in the field of Computer Vision and Pattern Recognition.    It serves as well the purpose of enhancing the students' scientific communication and presentation skills, and nurturing good research habits.

The course will take a general form of:

  1. pre-class paper reading
  2. seminar/lecture
  3. classroom discussion and project presentation
  4. final project and report

In each class we will analyse one or two selected paper form the top-tier Computer Vision conferences (e.g., ICCV, CVPR, ECCV or NIPS).   Students are required to read assigned paper before class.  The class will start with a presentation about the topic of the day, followed by a classroom discussion.  By the end of the course each student is expected to complete a term-project and report based on one selected paper.  This course will present an in depth coverage of recent important topics in computer vision.

Learning Outcomes

In completing this course, students will acquire:

  1. A clear understanding of some current and important research issues in computer vision and pattern recognition;
  2. The skills and knowledge needed to appreciate research ideas and evaluate good publications in the research field.
  3. The ability of conducting effective scientific communications, such as report writing and seminar presentation. 
  4. Understand and be able to apply knowledge and skills to project and problems in practice.
  5. The skills and habit needed to carry out independent and innovative research.
Indicative Assessment Classroom discussion (20%); Reading report  and presentation (30%); Term project and final report, presentation (50%)
Workload Lectures /classroom presentation and discussion: 2 hours per week. After-class reading and project: 4 hours per week.
Course Classification(s) AdvancedAdvanced courses are designed for students having reached 'first degree' level of assumed knowledge, which provide a deep understanding of contemporary issues; or 'second degree' and higher levels of knowledge; or for transition to research training programs.
Areas of Interest Engineering
Assumed Knowledge and
Required Skills

A working knowledge of Matlab or C/ C++ programming

  • Linear algebra
  • Calculus
  • No prior knowledge of vision is assumed, but the fundamental coursework of ENGN8530 is generally recommended.
Requisite Statement Permission of the course convenor
Prescribed Texts

No textbook is required, but the following two books can serve as general background reading:

  • Trucco and Verri Introductory Techniques for 3 D Computer Vision, Prentice Hall 1998.
  • Forsyth and Ponce Computer Vision: A Modern Approach, Prentice Hall 2002.

The information published on the Study at ANU 2009 website applies to the 2009 academic year only. All information provided on this website replaces the information contained in the Study at ANU 2008 website.

Updated:   13 Nov 2015 / Responsible Officer:   The Registrar / Page Contact:   Student Business Solutions