Gun identification from gunshot audios for secure public places using transformer learning

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Abstract

Increased mass shootings and terrorist activities severely impact society mentally and physically. Development of real-time and cost-effective automated weapon detection systems increases a sense of safety in public. Most of the previously proposed methods were vision-based. They visually analyze the presence of a gun in a camera frame. This research focuses on gun-type (rifle, handgun, none) detection based on the audio of its shot. Mel-frequency-based audio features have been used. We compared both convolution-based and fully self-attention-based (transformers) architectures. We found transformer architecture generalizes better on audio features. Experimental results using the proposed transformer methodology on audio clips of gunshots show classification accuracy of 93.87%, with training loss and validation loss of 0.2509 and 0.1991, respectively. Based on experiments, we are convinced that our model can effectively be used as both a standalone system and in association with visual gun-detection systems for better security.

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Nijhawan, R., Ansari, S. A., Kumar, S., Alassery, F., & El-kenawy, S. M. (2022). Gun identification from gunshot audios for secure public places using transformer learning. Scientific Reports, 12(1). https://doi.org/10.1038/s41598-022-17497-1

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