cse3vis visual information systems

VISUAL INFORMATION SYSTEMS

CSE3VIS

2018

Credit points: 15

Subject outline

This subject covers an overview of visual information access, image representation, feature extraction, image recognition and understanding, and content-based image retrieval techniques.Design issues on facial image recognition and content-based image retrieval systems for image database management will be addressed, which contain eigenface technology, image feature extraction, indexing, similarity measure, lower-bounding lemma and performance evaluation. Practice on facial image recognition (FIR) will be offered in Labs.

SchoolSchool Engineering&Mathematical Sciences

Credit points15

Subject Co-ordinatorJustin Wang

Available to Study Abroad StudentsYes

Subject year levelYear Level 3 - UG

Exchange StudentsYes

Subject particulars

Subject rules

Prerequisites CSE2AIF or CSE2DBF

Co-requisitesN/A

Incompatible subjectsN/A

Equivalent subjectsN/A

Special conditionsN/A

Learning resources

Readings

Resource TypeTitleResource RequirementAuthor and YearPublisher
ReadingsContent-based image and video retrievalRecommendedMarques, O and Furht, B 20021ST ED, SPRINGER
ReadingsImage recognition and classification: algorithms, systems and applicationsRecommendedJavidi, B 20021ST EN, CRC PRESS

Graduate capabilities & intended learning outcomes

01. Define the technologies used in visual information systems

Activities:
Students are required to complete the questions related to the specific information and knowledge in the exam papers

02. Learn the major issues in face recognition, content-based image database management, and describe how to effectively represent visual data for visual information processing

Activities:
Students are required to complete all questions related to the specific techniques for visual data modeling, face recognition and visual information retrieval in the exam papers

03. Demonstrate hands-on experience in developing a face recognition (FR) system based on eigenface technology

Activities:
one assignment on face recognition system design, and 8 laboratories exercises

04. Analyse the robustness of face recognition systems

Activities:
Students are required to understand the significance of robust face image recognition for real world applications

Subject options

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Start date between: and    Key dates

Melbourne, 2018, Semester 1, Day

Overview

Online enrolmentYes

Maximum enrolment sizeN/A

Enrolment information

Subject Instance Co-ordinatorJustin Wang

Class requirements

LectureWeek: 10 - 22
One 2.0 hours lecture per week on weekdays during the day from week 10 to week 22 and delivered via face-to-face.

Laboratory ClassWeek: 11 - 22
One 2.0 hours laboratory class per week on weekdays during the day from week 11 to week 22 and delivered via face-to-face.

Assessments

Assessment elementComments%ILO*
one 3-hour examinationHurdle requirement: To pass the subject, a pass in the examination is mandatory.7001, 02
One design report (750 words)The assignment is about face recognition system design3003, 04