Enhancing Crime Scene Investigations through Virtual Reality and Deep Learning Techniques
Antonino Zappal\`a (1), Luca Guarnera (1), Vincenzo Rinaldi (2),, Salvatore Livatino (3), Sebastiano Battiato (1) ((1) University of Catania,, (2) University of Dundee, (3) University of Hertfordshire)

TL;DR
This paper presents a novel approach combining virtual reality and deep learning for automated crime scene analysis, improving accuracy, speed, and safety in forensic investigations.
Contribution
It introduces a fully automatic object recognition system using deep learning within a VR environment for crime scene reconstruction and analysis.
Findings
Effective object recognition in simulated crime scenes
Enhanced speed and accuracy in evidence identification
Reduced risk of scene contamination and bias
Abstract
The analysis of a crime scene is a pivotal activity in forensic investigations. Crime Scene Investigators and forensic science practitioners rely on best practices, standard operating procedures, and critical thinking, to produce rigorous scientific reports to document the scenes of interest and meet the quality standards expected in the courts. However, crime scene examination is a complex and multifaceted task often performed in environments susceptible to deterioration, contamination, and alteration, despite the use of contact-free and non-destructive methods of analysis. In this context, the documentation of the sites, and the identification and isolation of traces of evidential value remain challenging endeavours. In this paper, we propose a photogrammetric reconstruction of the crime scene for inspection in virtual reality (VR) and focus on fully automatic object recognition with…
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Taxonomy
TopicsDigital and Cyber Forensics · Anomaly Detection Techniques and Applications
MethodsFocus
