Tom Stanton
3 months ago
PhD Studentship: Optimising Aerial Image Analysis for Beach Litter Characterisation and Quantification Loughborough University in United Kingdom
Degree Level
PhD
Field of study
Computer Science
Funding
Available
Deadline
Expired
Country
United Kingdom
University
Loughborough University

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About this position
This fully funded PhD studentship at Loughborough University offers an exciting opportunity to advance research in environmental monitoring by optimising aerial image analysis for beach litter characterisation and quantification. The project is embedded within a three-year marine litter monitoring campaign on the Isle of Skye, Scotland, and builds on the university’s extensive research in this area, including the '50 Years of Litter on Skye' initiative. The successful candidate will join an interdisciplinary team integrating environmental science, engineering, and social science methodologies, working closely with community partners across Scotland’s west coast.
The research will focus on evaluating the efficacy and suitability of digital image collection and analysis for characterising beach litter on heavily-littered coastlines. The project will assess various image capture techniques, including the use of drones and mobile phones, and explore the potential of different sensor types such as RGB and multispectral cameras. The analysis will compare manual digital approaches (e.g., Dot Dot Goose) with the development of automated computer vision algorithms for marine litter characterisation and quantification.
Supervision will be provided by Dr Tom Stanton (primary), Prof. Cunjia Liu, Prof. Adrian Spencer, and Dr Nicholas Midgley (Nottingham Trent University), offering a breadth of expertise in environmental science, engineering, and computational methods. The studentship is partially funded by NERC and provides a tax-free stipend of £20,780 per annum (2025/26), UK tuition fees for 3.5 years, and a Research Training Support Grant (RTSG) of £8,000. International candidates are eligible, with the university covering the difference between UK and international tuition fees for successful applicants, subject to UKRI funding rules.
Applicants should hold or expect to obtain at least a 2:1 degree (or equivalent) in Geography, Environmental Science, Computer Science, Engineering, or a related field, or possess an appropriate Master’s degree. Minimum English language requirements apply. The application process involves completing a CENTA studentship application form (available at https://centa.ac.uk/apply/) and submitting it online via the Loughborough University portal, selecting the 'Department of Geography and Environment' and quoting reference CENTA2026-LU09. The deadline for applications is January 7th, 2026, with interviews expected in early February 2026.
This studentship is ideal for candidates interested in interdisciplinary research at the intersection of environmental science, computer vision, and community engagement, with a strong commitment to addressing marine litter challenges through innovative technological solutions.
Funding details
Available
What's required
Applicants must hold or expect to gain at least a 2:1 degree (or equivalent) in a relevant subject such as Geography, Environmental Science, Computer Science, Engineering, or an appropriate Master’s degree. Minimum English language requirements must be met as specified by the university. No more than 30% of studentships can be awarded to international candidates, but successful international applicants will have the difference between UK and international tuition fees covered.
How to apply
Complete the CENTA studentship application form (available at https://centa.ac.uk/apply/) and apply online via the Loughborough University portal. Select 'Loughborough' campus and the 'Department of Geography and Environment' programme, quoting reference CENTA2026-LU09. Upload the CENTA form, CV, and required documents. Deadline is January 7th, 2026.
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