This article examines machine learning analysis of gunshot recognition.
This paper investigates the efficiency of various machine learning models for gunshot recognition. The ability to recognize a gunshot has significance in reinforcing public safety, assisting in crime scene investigations, and preventing gun violence. The authors present a model to identify the type of pistol or rifle discharged by analyzing only an audio signal of the gunshot. Among the array of methods explored, AdaBoost performed the best achieving an accuracy of 99.9% and sustaining over 80% accuracy with 40 dB conditions. Additionally, the researchers experimented with the importance level of the features to identify the most relevant variables that boost the performance of the algorithms. (Published Abstract Provided)
Downloads
Similar Publications
- A Feature Mapping Technique for Complex Data Object Generation With Likelihood and Deep Generative Approaches
- Comparing the Uses and Benefits of Stationary Cameras Versus Body-worn Cameras in a Local Jail Setting
- Poster Abstract: Learning-based Sensor Scheduling for Event Classification on Embedded Edge Devices