Heather Flowe
Top university
4 days ago
PhD Studentship: Enhanced Eyewitness Identification – Predicting and Optimising ID Accuracy Through Behavioural Analysis University of Birmingham in United Kingdom
Degree Level
PhD
Field of study
Computer Science
Funding
Available
Deadline
Feb 17, 2026
Country
United Kingdom
University
University of Birmingham

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About this position
The University of Birmingham, in partnership with the Centre for National Training and Research Excellence in Understanding Behaviour (Centre-UB) and Promat, invites applications for a fully funded PhD studentship starting October 2026. This interdisciplinary project aims to revolutionise eyewitness identification procedures by integrating cognitive psychology, immersive technology, and artificial intelligence. Despite advances in psychological science, police lineups have changed little in over a century, often relying on static photographs that fail to replicate real-world conditions such as poor lighting, variable viewpoints, and disguises.
The successful candidate will design and conduct behavioural experiments using a mock witness paradigm, allowing participants to adjust lineup conditions to better match their memory of events. The project will investigate whether these adaptive, memory-congruent environments improve identification accuracy compared to traditional methods, and will analyse how witnesses explore faces under these conditions. A key innovation is the use of AI and computational modelling: the student will analyse eye movements, exploration patterns, and verbal reports to develop models predicting identification reliability. Training will be provided in designing interpretable, legally robust AI systems, including attention-based deep learning and reinforcement learning models that adapt in real time to witness behaviour.
Collaboration with Promat, the UK's leading provider of police lineup software, offers the student direct experience with operational systems and industry constraints, ensuring the research has real-world impact and deployment potential. Joint supervision from the Schools of Psychology and Computer Science provides strong interdisciplinary support and bridges academic research with industry innovation.
Applicants should hold a 1st class or 2:1 degree in Psychology, Cognitive Science, Computer Science, Neuroscience, Data Science, or a related field. An MSc is desirable but not essential. Experience in coding (Python, R, Matlab), behavioural experimentation, statistics, or machine learning is advantageous, but comprehensive training will be provided. Interest in human perception, AI ethics, or forensic science is encouraged. The studentship covers tuition fees, a maintenance stipend, research training support, and activity grants. Due to UKRI funding rules, up to 30% of the cohort may be international students. For further details, visit the Centre-UB website or contact Professor Heather Flowe at [email protected]. The application deadline is February 17, 2026.
Funding details
Available
What's required
Applicants must have a 1st class or 2:1 degree in Psychology, Cognitive Science, Computer Science, Neuroscience, Data Science, or an allied field. An MSc in a relevant area is desirable but not required. Experience in coding (e.g., Python, R, Matlab) and behavioural experimentation, statistics, or machine learning is desirable, but full training will be provided. Interest in human perception, AI ethics, or forensic science is encouraged. International applicants are eligible, but only up to 30% of the cohort may be non-UK per UKRI rules.
How to apply
Apply by following the instructions at the provided application link. Click the 'Apply' button and complete the online application process. For informal enquiries, contact Professor Heather Flowe at [email protected]. Ensure your application is submitted by February 17, 2026.
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