‘Forensic-DataFusion-Tool’: A Python-based application for exploratory forensic data analysis using merged datasets from analytical sensors
Academic Article
Publication Date:
2025
Short description:
(2025). ‘Forensic-DataFusion-Tool’: A Python-based application for exploratory forensic data analysis using merged datasets from analytical sensors [journal article - articolo]. In SOFTWARE IMPACTS. Retrieved from https://hdl.handle.net/10446/313665
abstract:
Portable sensors for on-site forensic analysis have advanced significantly, enabling reliable methods for crime scene investigation. Non-destructive analytical instruments are especially useful for providing chemical information from the same specimen. Combining data from these instruments through data fusion enhances analytical responses. Data fusion merges data from different sources to improve exploratory and predictive models. No current application supports multi-dataset fusion on a single platform. To address this, we developed a Python-based 'Forensic-DataFusion-Tool' to merge raw and preprocessed data from multiple sensors, speeding up data fusion and enabling future machine learning updates, including classification algorithms.
Iris type:
1.1.01 Articoli/Saggi in rivista - Journal Articles/Essays
List of contributors:
Felizzato, Giorgio; Verdi, Michele; Gargantini, Angelo Michele; Pellegrinelli, Nico; Romolo, Francesco Saverio
Published in: