Ronald Clark
My aim is to make machines that can perceive, analyse and understand the world the way we do.
Biography
I am a research fellow at Imperial College London, where I work on machine learning for 3D vision. I was recently fortunate enough to receive an Imperial College Research Fellowship. I did my PhD at the University of Oxford Department of Computer Science where I was funded by an EPSRC scholarship. Before coming to the UK I did my BSc and MSc in electrical engineering at the University of the Witwatersrand in South Africa.
Research overview
My research centers around 3D machine perception which is needed to enable mobile devices to model, explore and understand their surroundings. I am particularly interested in ways in which deep learning can be used alongside traditional mathematical and geometrical models to unlock a new level of performance in spatial machine perception. The main capabilities I work on are realtime simulation, capture and understanding of 3D scenes.
My technical research contributions can be divided into three areas:
- generative models for learning compact and interpretable representations of the world
- optimization techniques for efficienct and robust inference
- photorealistic rendering and simulation systems
Updates
| Jun 20, 2021 | Serving as an Area Chair for BMVC’21 |
|---|---|
| May 1, 2021 | CVPR’21 Outstanding Reviewer Award |
| Dec 10, 2020 | ACCV’20 Outstanding Reviewer Award |
| Nov 7, 2020 | Organizing a tutorial on 3D reconstruction and segmentation at 3DV’2020 |
| Oct 10, 2020 | Invited talk at MILA/REAL Robot Learning Seminar series: video |
| Jun 10, 2020 | CVPR’20 Outstanding Reviewer Award |
| Jul 1, 2019 | Invited Talk at the BMVA technical meeting on Geometry and Deep Learning. |
| Mar 1, 2019 | Our 2nd Workshop on Deep Learning for Visual SLAM will be held at ICCV’19! |
| Dec 1, 2018 | Co-organizing the CVPR’19 Workshop on Deep Learning for Visual Semantic Navigation |
| Jun 1, 2018 | CVPR’18 Best Paper Honourable Mention Award |
Selected Publications
- CVPR
CodeSLAM-Learning a Compact, Optimisable Representation for Dense Visual SLAMIn IEEE Conference on Computer Vision and Pattern Recognition (CVPR) 2018 - ECCV
Learning to Solve Nonlinear Least Squares for Monocular StereoIn Proceedings of the European Conference on Computer Vision (ECCV) 2018 - AAAI
VINet: Visual-Inertial Odometry as a Sequence-to-Sequence Learning ProblemIn AAAI Conference on Artificial Intelligence 2017 - Thesis
Visual-inertial odometry, mapping and re-localization through learningUniversity of Oxford
PhD Thesis
2017 - CVPR
Vidloc: A deep spatio-temporal model for 6-dof video-clip relocalizationIn IEEE Conference on Computer Vision and Pattern Recognition (CVPR) 2017