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Automotive Artificial Intelligence
Postgraduate Certificate
Course Details
Course Code | SG_EAUTO_E09 |
---|---|
Level | 9 |
Duration | 1 year |
Credits | 30 |
Method of Delivery | Online |
Campus Locations | Sligo |
Mode of Delivery | Part Time |
Course Overview
Successful applicants to this course may receive funding for their fees on this course through the HCI Pillar 3 Micro-Credentials Learner Fee Subsidy initiative. The number of funded places is limited and will be offered on a first-come, first-served basis.
Course Details
Year 1
Semester | Module Details | Credits | Mandatory / Elective |
---|---|---|---|
1 |
Applied Linear AlgebraThe subject covers the linear algebra required for post-graduate engineering courses. The learner will gain the expertise to interpret the linear algebra models used in the engineering literature. It will also enable learners to model problems using linear algebra methods. Learning Outcomes 1. Solve systems of linear equations and analyse the solutions. 2. Analyse affine transformations in three dimensions. 3. Interpret the linear algebra in state of the art research publications andreproduce findings. 4. Explain the use of vector spaces in analysing solutions to systems of equations. 5. Use projections to find the least squares solution of overdetermined systems. 6. Decompose matrices into their singular value decompositions and interpret. 7. Apply matrices to the Fourier transform, graphs and networks. |
05 | Mandatory |
1 |
ADAS and Autonomous System ArchitectureADAS and Autonomous System Architecture provides the learner with an appreciation for the bigger picture of the automotive industry. The student will gain an understanding of the multi-disciplinary nature of the industry, as well as knowledge of its supply chain. Different system architectures and design constraints are introduced. Learning Outcomes 1. Demonstrate an understanding of the automotive landscape, including its supply chain, and the associated roles and responsibilities. 4. Conduct an analysis of the design constraints within automotive and use this information to appraise the decision-making behind current design. |
05 | Mandatory |
1 |
Machine LearningThis module introduces the topic of machine learning algorithms (algorithms that learn from data), with the first part of the module dedicated to the standard shallow forms of machine learning before moving on to Deep Learning and Convolutional Neural Networks for use in computer vision tasks, particularly recognition, classification and localisation. The emerging topic of Deep Reinforcement Learning will be briefly introduced. The module will look at training strategies and frameworks for Deep Learning. As well as the technical/scientific elements, students will reflect on the ethical implications of machine learning. Learning Outcomes 1. Compare state of the hand engineered detectors with machine learning techniques in terms of performance on appropriate metrics and data sets and determine the appropriateness of each for safety critical applications. |
05 | Mandatory |
2 |
Multiple View Geometry in Computer VisionThis module looks at the computer vision required to understand the structure of a real-world scene given several images of it. Introduces key 2D-Image Processing, segmentation and features detection techniques, camera intrinsic and extrinsic parameters and multiple view geometries. Learning Outcomes 1. Select and apply 2D Image processing techniques to appropriate problems. |
05 | Mandatory |
2 |
Modelling, Simulation and Test Methods for Advanced Driver Assistance SystemsThis module introduces systems engineering concepts such as the modelling and simulation of driver assistance functions as well as an overview of the test and validation requirements and processes for autonomous vehicles. Learning Outcomes 1. Critically evaluatemodel-based approaches for the development and test of advanced driver assistance systems and autonomous vehicles. 2. Summarise the System Engineering process in the development of technology for autonomous vehicles 3. Use computer aided tools to model and simulate real-world scenarios for the development of advanced driver assistance systems 5. Compare validation requirements, technologies and methods for advanced driver assistance systems and autonomous vehicles. |
05 | Mandatory |
2 |
Sensor FusionThis module covers the state of the art theory and algorithms for multi-modal sensor fusion in autonomous vehicles with application to localisation, navigation and tracking problems. Learning Outcomes 1. Evaluate the strengths and weaknesses of common sensor technologies to the development of effective multimodal sensor architectures. 3. Critically evaluate sensor fusion networks and their applicationsin the automotive environment 4. Communicate the process of design, testing and evaluation of a Sensor Fusion-based system to an audience of peers 5. Understand and articulate the key concepts of advanced sensor fusion research presented in recent literature |
05 | Mandatory |
Recommended Study Hours per week
Examination and Assessment
On-Campus Attendance Requirement
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Entry Requirements
Fees
Total Fees EU: €3600
Successful applicants to this course may receive funding for their fees on this course through the HCI Pillar 3 Micro-Credentials Learner Fee Subsidy initiative.
Further information on fees