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ELE3107 Signal Processing

Semester 2, 2022 Springfield On-campus
Units : 1
Faculty or Section : Faculty of Health, Engineering and Sciences
School or Department : School of Engineering
Grading basis : Graded
Course fee schedule : /current-students/administration/fees/fee-schedules

Staffing

Examiner:

Overview

Digital signal processing is essential in many telecommunications, instrumentation, measurement, control and power applications. As such, a working knowledge of digital sampling and discrete-time processing provides an essential basis for understanding existing engineering systems, and facilitates the design of new systems for emerging applications.

Signal processing is the treatment of signals to enable detection, classification, transmission or enhancement. Such signals may, for example, be the apparent noise generated by a mechanical process, music, speech or other audio, or a video image. This course aims to give the student a thorough grounding in the theoretical and practical aspects of digital signal processing. Practical applications of signal processing are emphasised via directed experimentation and assignment work.

Course learning outcomes

The course objectives define the student learning outcomes for a course. On completion of this course, students should be able to:

  1. distinguish between a deterministic and a random signal;
  2. describe any signal probabilistically in terms of amplitude and spatial, frequency or temporal functions;
  3. describe a deterministic signal in terms of transforms and difference equations;
  4. design and implement signal processing algorithms for sampled signals such as audio;
  5. design and implement signal processing algorithms for sampled two-dimensional signals such as images;
  6. design and implement digital filter algorithms for signal conditioning problems;
  7. be able to implement signal processing algorithms such as Fourier transforms, convolution, correlation, and filtering.

Topics

Description Weighting(%)
1. Fourier analysis 20.00
2. Random processes 20.00
3. Digital signal processing 50.00
4. Information theory 10.00

Text and materials required to be purchased or accessed

Leis, J 2011, Digital signal processing using MATLAB for students and researchers, John Wiley & Sons, Hoboken, New Jersey.
MATLAB Student Edition.

Student workload expectations

To do well in this subject, students are expected to commit approximately 10 hours per week including class contact hours, independent study, and all assessment tasks. If you are undertaking additional activities, which may include placements and residential schools, the weekly workload hours may vary.

Assessment details

Approach Type Description Group
Assessment
Weighting (%) Course learning outcomes
Assignments Design Model (theoretical) No 10 1,2,3
Assignments Written Problem Solving No 40 4,6,7
Examinations Non-invigilated Time limited online examinatn No 50 1,2,3,4,5,6,7
Date printed 10 February 2023