Metadata
Title
Visual Artificial Intelligence Laboratory (VAIL)
Category
graduate
UUID
b4d70eadcb5f4962a046de034ae9fa92
Source URL
https://www.brookes.ac.uk/research/units/tde/groups/visual-artificial-intelligen...
Parent URL
https://www.brookes.ac.uk/engage-and-innovate/consultancy
Crawl Time
2026-03-19T05:17:39+00:00
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Visual Artificial Intelligence Laboratory (VAIL)

Source: https://www.brookes.ac.uk/research/units/tde/groups/visual-artificial-intelligence-laboratory Parent: https://www.brookes.ac.uk/engage-and-innovate/consultancy

Group Leader(s): Professor Fabio Cuzzolin

Contact:

fabio.cuzzolin@brookes.ac.uk

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About us

Research impact

Leadership

Membership

Projects

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About us Research impact Leadership Membership Projects

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About us

The Visual Artificial Intelligence Laboratory was founded in 2012 by Professor Cuzzolin under the name of 'Machine Learning' (and later 'Artificial Intelligence and Vision') research group, and has since conducted work at the boundaries of human action recognition in computer vision. Prof Cuzzolin is a leading scientist in the mathematics of uncertainty, in particular random set and belief function theory.

Our research interests span a number of frontier topics in:

More information about VAIL

Part of

The laboratory has received funding from the European Union's Horizon 2020 research and innovation programme under grant agreements No. 964505 (E-pi) and No. 779813 (SARAS).

Research impact

The group has built, in just a few years, a leadership position in the field of deep learning for action detection, with some of the best detection accuracies to date and the first ever system able to localise multiple actions on the image plane in (better than) real time. The team's effort is now shifting towards topics at the frontier of computer vision, such as future action prediction, deep video captioning and the development of a theory of mind for machines.

The Lab currently runs on a budget of around £3.2M (not fully incorporating the €4.3M Horizon 2020 project SARAS or the €3M FET Epistemic AI we are coordinating), with currently nine live projects funded by Horizon 2020, the Leverhulme Trust, Innovate UK, Huawei Technologies, UKIERI, and the School of Engineering, Computing and Mathematics. The budget is projected to further significantly increase in 2022.

Prof Cuzzolin's reputation in uncertainty theory and belief functions comes from the formulation of a geometric approach to uncertainty in which probabilities, possibilities, belief measures and random sets are represented and analysed by geometric means. This has recently developed into an effort to reshape the foundations of artificial intelligence to better incorporate and model second-order, 'epistemic' uncertainty: an approach that we call Epistemic Artificial Intelligence.

Leadership

Professor Fabio Cuzzolin

Professor of Artificial Intelligence

View profile for Fabio Cuzzolin

Membership

Staff members Research students Collaborators

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Staff

Name Role Email
Dr Andrew Bradley Associate Professor abradley@brookes.ac.uk
Dr Eleni Elia Senior Lecturer in Statistics eelia@brookes.ac.uk
Dr Tjeerd Olde Scheper Associate Professor tvolde-scheper@brookes.ac.uk
Dr Alex Rast Associate Professor arast@brookes.ac.uk
Dr Matthias Rolf Associate Professor mrolf@brookes.ac.uk
Dr Inna Skarga-Bandurova Associate Professor of Artificial Intelligence iskarga-bandurova@brookes.ac.uk

Projects

Active projects Completed projects

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Active projects

Project title and description Investigator(s) Funder(s) Dates
Artificial intelligence for autonomous driving The project concerns the design and development of novel ways for robots and autonomous machines to interact with humans in a variety of emerging scenarios, including: human-robot interaction and autonomous driving, with a focus of perception, prediction of intent and trajectories and scene understanding. Dr Andrew Bradley, Professor Fabio Cuzzolin From: March 2019

Resources

Below you can find links to a number of resources generated by our research, including datasets and code.

ROAD dataset

ROAD is the ROad event Awareness Dataset for autonomous driving, released at the ROAD @ ICCV 2021 workshop.

ROAD code

Our ICCV'17 code on real-time action detection, the first online solution ever published.

CAR dataset

The Continual Activity Recognition (CAR) dataset was released at the CSSL @ IJCAI 2021 workshop.

3D RetinaNet

3D RetinaNet is our event detection approach, used as baseline for detection tasks in the ROAD dataset.

CCC dataset

The Continual Crowd Counting (CCC) dataset was released at the CSSL @ IJCAI 2021 workshop.

Avalanche

Avalanche: the End-to-End Library for Continual Learning created by our partners ContinualAI.

SARAS-MESAD dataset

The SARAS-MESAD dataset is a surgical action detection dataset released at MICCAI 2021 as part of the SARAS project.

OJLA

Code for the BMVC 2018 paper 'Incremental Tube Construction for Human Action Detection'.

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