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FIT5221 Intelligent image and video analysis

Chief Examiner

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Unit Code, Name, Abbreviation

FIT5221 Intelligent image and video analysis (11 Sep 2019, 11:03am) [INTEL IMAGE VIDEO AN (11 Sep 2019, 11:03am)]

Reasons for Introduction

Reasons for Introduction (06 Sep 2019, 12:47pm)

Everyday millions of images and videos are being uploaded on the social media platforms. This has given computer scientist an interesting opportunity to empower computers with the capability of understanding the visual world around them. This area of computer vision is a sub field of artificial intelligence and can help in adding ?eyes? to computers. Can we develop techniques for making cars of the future smarter by making them ?see? the cars, road lanes, pedestrians and signs? How can the computers be empathetic? How to make them understands the emotion of the users? Can the machines in manufacturing environment detect quality of their output with visual computing? These along with many other questions can be answered by studying the area of computer vision.

Reasons for Change (18 Sep 2020, 11:12am)

11/09/2019 - Admin: Unit name has been updated and added exam information.

18/09/2020 - Admin: Update to include new assessment and teaching approach fields as per Handbook requirements.

Role, Relationship and Relevance of Unit (06 Sep 2019, 12:56pm)

This unit is a core elective within C6007 Master of Artificial Intelligence.

Objectives

Objectives (11 Sep 2019, 11:04am)

On successful completion of this unit students should be able to:

  1. describe image analysis and low-level vision
  2. describe semantic image and video understanding techniques
  3. describe CNN and their applications.
  4. implement and extend existing computer vision algorithms.
  5. evaluate and compare techniques suitable for adding vision capability to unimodal and multimodal intelligent systems

Unit Content

ASCED Discipline Group Classification (06 Sep 2019, 12:49pm)

020119

Synopsis (11 Sep 2019, 11:05am)

This unit will discuss the fundamental and modern concepts in image and video analysis. The students will be introduced to the basics of image processing and low-level vision. The topics related to image formation, operations, features and segmentation will enable students with the understanding for developing vision enabled systems. Concepts related to convolutional neural networks (CNN) will be introduced and recent examples will be thoroughly analysed. Recent computer vision concepts will be discussed from a deep learning perspective. The unit will be balance between the theoretical and the practical implementation aspects of computer vision

Prescribed Reading (for new units) (18 Sep 2020, 11:13am)

Technological requirements

Assignments will use the Python programming language.

Teaching Methods

Mode (06 Sep 2019, 12:50pm)

On-campus

Special teaching arrangements (18 Sep 2020, 11:14am)

Online learning

Active learning

Simulation or virtual practice

Research activities

Assessment

Assessment Summary (18 Sep 2020, 11:19am)

Examination (2 hours and 10 minutes): 40%; In-semester assessment: 60%

  1. Assignment 1 - 20% - ULO: 1
  2. Assignment 2 - 20% - ULO: 2, 3
  3. Assignment 3 - 20% - ULO: 3, 4
  4. Examination - 40% - ULO: 1, 2, 3, 5

Workloads

Workload Requirements (06 Sep 2019, 12:51pm)

Minimum total expected workload equals 12 hours per week comprising:

  • Two hours/week lectures
  • Two hours/week laboratories
  • A minimum of 8 hours per week of personal study for completing lab/tutorial activities, assignments, private study and revision.

    Resource Requirements

    Prerequisites

    Prerequisite Units (11 Sep 2019, 11:06am)

    FIT5197

    Proposed year of Introduction (for new units) (06 Sep 2019, 12:53pm)

    Semester 2, 2020

    Location of Offering (06 Sep 2019, 12:53pm)

    Clayton

    Faculty Information

    Proposer

    Emma Nash

    Approvals

    School: 11 Sep 2019 (Jeanette Niehus)
    Faculty Education Committee: 11 Sep 2019 (Jeanette Niehus)
    Faculty Board: 11 Sep 2019 (Jeanette Niehus)
    ADT:
    Faculty Manager:
    Dean's Advisory Council:
    Other:

    Version History

    06 Sep 2019 Emma Nash modified UnitContent/ASCED; modified UnitContent/Synopsis; modified Teaching/Mode; modified Workload/ContactHours; modified Assessment/Summary; modified Prerequisites/PreReqUnits; modified Prerequisites/PreReqKnowledge; modified DateOfIntroduction; modified LocationOfOffering; modified ReasonsForIntroduction/RoleRelationshipRelevance
    06 Sep 2019 Emma Nash FIT5221 Chief Examiner Approval, ( proxy school approval )
    06 Sep 2019 Emma Nash FEC Approval
    06 Sep 2019 Emma Nash FacultyBoard Approval - Approved at FEC 4/19.
    11 Sep 2019 Jeanette Niehus Admin: updated unit name, synopsis and learning outcomes as per unit proposal.
    11 Sep 2019 Jeanette Niehus FIT5221 Chief Examiner Approval, ( proxy school approval )
    11 Sep 2019 Jeanette Niehus FEC Approval
    11 Sep 2019 Jeanette Niehus FacultyBoard Approval - Executively approved by FEC Chair, 09/09/19.
    18 Sep 2020 Joshua Daniel modified ReasonsForIntroduction/RChange; modified UnitContent/PrescribedReading; modified Teaching/SpecialArrangements; modified Assessment/Summary

    This version: