Forensics and Security Research Group

Forensics and Security Research Group

Academic cybersecurity and digital forensics research group spanning University College Dublin and South East Technological University.

Research Focus

The Forensics and Security Research Group conducts research in digital forensics, cybersecurity, network investigation, artificial intelligence for forensic workflows, cloud and IoT forensics, and digital forensic education.

Founded in University College Dublin and now expanded through collaboration with South East Technological University, the group works with academic, law-enforcement, and industry partners on research that improves the reliability, scalability, and practical impact of digital investigations.

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Latest

News

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Preview of Plug to Place: Indoor Multimedia Geolocation from Electrical Sockets for Digital Investigation

Plug to Place: Indoor Multimedia Geolocation from Electrical Sockets for Digital Investigation

This paper presents a novel approach to indoor multimedia geolocation using electrical sockets as consistent indoor markers for geolocation. A three-stage deep learning pipeline detects plug sockets, classifies them into standardized types, and maps them to countries. The approach is evaluated on the Hotels-50K dataset and demonstrates its practical utility for law enforcement in human trafficking investigations.

Recent Output

Selected Publications

Full Publications List
2024
First-page preview of Context Based Password Cracking Dictionary Expansion Using Generative Pre-trained Transformers

Context Based Password Cracking Dictionary Expansion Using Generative Pre-trained Transformers

Greta Imhof; Aikaterini Kanta; Mark Scanlon

2024 Cyber Research Conference - Ireland (Cyber-RCI)

This paper explores the effectiveness of combining a strategic contextual approach with large language models in password cracking. The authors create context-based password dictionaries through training PassGPT models with contextual information, demonstrating improved password cracking efficiency and accuracy.

2025
First-page preview of Towards a standardized methodology and dataset for evaluating LLM-based digital forensic timeline analysis

Towards a standardized methodology and dataset for evaluating LLM-based digital forensic timeline analysis

Hudan Studiawan; Frank Breitinger; Mark Scanlon

Forensic Science International: Digital Investigation Vol. 54S pp. 301982

This paper proposes a standardized methodology for evaluating the performance of Large Language Models (LLMs) in digital forensic timeline analysis tasks, such as event summarization. The methodology includes a dataset, timeline generation, and ground truth development, and recommends the use of BLEU and ROUGE metrics for quantitative evaluation.