Advanced Signal Processing

Subject ELEN90052 (2014)

Note: This is an archived Handbook entry from 2014.

Credit Points: 12.50
Level: 9 (Graduate/Postgraduate)
Dates & Locations:

This subject is not offered in 2014.

Time Commitment: Contact Hours: 36 hours of lectures (3 x one hour lectures per week) and up to 24 hours of workshops
Total Time Commitment:

200 hours

Prerequisites:

Prerequisites for this subject are:

ELEN90058 Signal Processing ( prior to 2011, ELEN30008 Signal Processing 1)

AND

ELEN90054 Probability and Random Models( prior to 2011, ELEN30002 Stochastic Signals and Systems )

Corequisites:

None

Recommended Background Knowledge:

None

Non Allowed Subjects:

Anti-requisite for this subject is:

Subject
Core Participation Requirements:

For the purposes of considering request for Reasonable Adjustments under the Disability Standards for Education (Cwth 2005), and Students Experiencing Academic Disadvantage Policy, academic requirements for this subject are articulated in the Subject Description, Subject Objectives, Generic Skills and Assessment Requirements of this entry. The University is dedicated to provide support to those with special requirements. Further details on the disability support scheme can be found at the Disability Liaison Unit website: http://www.services.unimelb.edu.au/disability/

Contact

Email: jmanton@unimelb.edu.au

Subject Overview:

AIMS
This subject provides an in-depth introduction to statistical signal processing.

INDICATIVE CONTENT

Students will study topics including:

  • Applications of statistical signal processing;
  • A review of stochastic signals and systems fundamentals – random processes, white noise, stationarity, auto- and cross-correlation functions, spectral- and cross-spectral densities, properties of linear time-invariant systems excited by white noise;
  • Parameter estimation - least squares and its properties, recursive least squares and least mean squares, optimisation-based methods, maximum likelihood methods;
  • Kalman filtering and selected topics from spectral estimation, Wiener and Markov filtering.
  • Power spectrum estimation

This material will be complemented with the use of software tools (e.g. MATLAB) for computation and a DSP (Digital Signal Processor) based development platform for the implementation of signal processing algorithms in the laboratory.

Learning Outcomes:

INTENDED LEARNING OUTCOMES (ILO)

On completing this subject the student should be able to:

  1. Apply fundamental mathematical tools, in particular stochastic techniques, in the analysis and design of signal processing systems;
  2. Recognise estimation problems and design, implement and analyses algorithms for solving them;
  3. Use software packages such as MATLAB for the analysis and design of signal processing systems;
  4. Implement signal processing systems with DSP based development platforms.
Assessment:
  • One written examination, not exceeding three hours at the end of semester, worth 60%;
  • A one-hour mid-semester test, worth 10%;
  • Two laboratory projects each worth 15%

Hurdle requirement: Students must pass the written exam to pass the subject.

Intended Learning Outcomes (ILOs) 1 and 2 are assessed in the final written examination, the mid-semester test, and submitted reports for two projects.

ILOs 3 and 4 are assessed as part of submitted project work and workshops.

Prescribed Texts:

TBA

Breadth Options:

This subject is not available as a breadth subject.

Fees Information: Subject EFTSL, Level, Discipline & Census Date
Generic Skills:
  • Ability to apply knowledge of basic science and engineering fundamentals
  • In-depth technical competence in at least one engineering discipline
  • Ability to undertake problem identification, formulation and solution
  • Ability to utilise a systems approach to design and operational performance
  • Capacity for independent critical thought, rational inquiry and self-directed learning
  • Ability to communicate effectively, with the engineering team and with the community at large
Notes:

Credit may not be obtained for both ELEN40004(431-461) Signal processing 2 and ELEN90052 Advanced Signal Processing

LEARNING AND TEACHING METHODS

The subject is delivered through lectures and workshop classes that combine both tutorial and hands-on laboratory activities.

INDICATIVE KEY LEARNING RESOURCES

Students are provided with lecture slides, tutorial questions and solutions, project specifications, and reference text lists.

CAREERS / INDUSTRY LINKS

Exposure to industry standard DSP design tools through laboratory activities.

Related Course(s): Bachelor of Engineering (Biomedical)Biosignals
Related Majors/Minors/Specialisations: Master of Engineering (Electrical with Business)
Master of Engineering (Electrical)

Download PDF version.