Supervisors
- Position
- Professor
- Division / Faculty
- Faculty of Engineering
- Position
- Senior Research Fellow
- Division / Faculty
- Faculty of Engineering
- Position
- Principal Research Fellow
- Division / Faculty
- Faculty of Engineering
Overview
Recent advances in computer vision have demonstrated superhuman performance on a variety of visual tasks including image classification, object detection, human pose estimation and human analysis. However, current approaches for achieving these results center around models that purely learn from large-scale datasets with highly complex neural network architectures. Despite the impressive performance, pure data-driven models usually lack robustness, interpretability, and adherence to physical constraints or commonsense reasoning.
As in the real world, the visual world of computer vision is governed by specific physical laws. Incorporating physics knowledge into machine learning models has a great potential to improve the feasibility, plausibility of the outputs, to reduce the amount of training data required, and to train neural networks faster with better generalization and smaller training datasets.
This project will develop new methods to advance physics-informed machine learning.
Research engagement
This project will develop new methods of physics-informed machine learning in different applications and domains. This will involve the development of new machine learning methods, and evaluating these on public datasets.
Research activities
Research activities include:
- research and development of novel physics-informed machine learning methods
- experimental design
- writing up, publishing and presenting research outcomes.
This project will build on an existing body of research conducted by the supervisory team.
Outcomes
The aim of the project is to develop new machine learning, computer vision and AI models to solve the research gaps in the related fields.
Skills and experience
You must have:
- a strong math background
- programming experience (preferably Python).
Some machine learning and/or computer vision experience is desired.
Start date
1 November, 2024End date
28 February, 2025Location
GP Campus
Keywords
Contact
Contact the supervisor for more information.