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Journal Article

Citation

Kabealo R, Wyatt S, Aravamudan A, Zhang X, Acaron DN, Dao MP, Elliott D, Smith AO, Otero CE, Otero LD, Anagnostopoulos GC, Peter AM, Jones W, Lam E. Data Brief 2023; 48: e109091.

Copyright

(Copyright © 2023, Elsevier Publishing)

DOI

10.1016/j.dib.2023.109091

PMID

37089208

PMCID

PMC10114508

Abstract

Early detection of firearm discharge has become increasingly critical for situational awareness in both civilian and military domains. The ability to determine the location and model of a discharged firearm is vital, as this can inform effective response plans. To this end, several gunshot audio datasets have been released that aim to facilitate gunshot detection and classification of a discharged firearm based on acoustic signatures. However, these datasets often suffer from a lack of variety in the orientations of recording devices around the source of the gunshot. Additionally, these datasets often suffer from the absence of proper time synchronization, which prevents the usage of these datasets for determining the Direction of Arrival (DoA) of the sound. In this paper, we present a multi-firearm, multi-orientation time-synchronized audio dataset collected in a semi-controlled real-world setting - providing us a degree of supervision - using several edge devices positioned in and around an outdoor firing range.


Language: en

Keywords

Machine learning; Acoustic situational awareness; Audio forensics; Gunshot audio classification; Internet of Battlefield Things (IoBT); Multiple sensor orchestration

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