Javascript must be enabled to continue!
Ambulance Siren Detection using Artificial Intelligence in Urban Scenarios
View through CrossRef
Traffic density is growing day by day due to the increasing population and affordable prices of cars. It created a void for traffic management systems to cope with traffic congestion and prioritize ambulances. The consequences can be a terrible situation. Emergency vehicles are the most affected in these situations, and inadequate traffic control can put many lives at stake. Ambulances on the road are detected using an acoustic-based Artificial Intelligence system in this article. Emergency vehicle siren and road noise datasets have been developed for ambulance acoustic monitoring. The dataset is developed along with a deep learning (MLP-based) model and trained to use audio monitoring to predict the ambulance presence on the roads. This model achieved 90% accuracy when trained and validated against a developed dataset of only 300 files. With this validated algorithm, researchers can develop a real-time hardware-based model to detect emergency vehicles and make them arrive at the hospital as soon as possible.
Sir Syed University of Engineering and Technology
Title: Ambulance Siren Detection using Artificial Intelligence in Urban Scenarios
Description:
Traffic density is growing day by day due to the increasing population and affordable prices of cars.
It created a void for traffic management systems to cope with traffic congestion and prioritize ambulances.
The consequences can be a terrible situation.
Emergency vehicles are the most affected in these situations, and inadequate traffic control can put many lives at stake.
Ambulances on the road are detected using an acoustic-based Artificial Intelligence system in this article.
Emergency vehicle siren and road noise datasets have been developed for ambulance acoustic monitoring.
The dataset is developed along with a deep learning (MLP-based) model and trained to use audio monitoring to predict the ambulance presence on the roads.
This model achieved 90% accuracy when trained and validated against a developed dataset of only 300 files.
With this validated algorithm, researchers can develop a real-time hardware-based model to detect emergency vehicles and make them arrive at the hospital as soon as possible.
Related Results
Low ambulance availability at health facilities and disparity across regions in Ethiopia: a cross-sectional health facility level assessment
Low ambulance availability at health facilities and disparity across regions in Ethiopia: a cross-sectional health facility level assessment
Abstract
Background: Lack of well-functioning referral and quality of the service are challenges for many of the developing countries health care system. This study evaluat...
Use of Personal Protective Equipment in General Practice and Ambulance settings: a rapid review
Use of Personal Protective Equipment in General Practice and Ambulance settings: a rapid review
AbstractThe use of personal protective equipment (PPE) is a cornerstone of infection prevention and control guidelines and was of increased importance during the COVID-19 pandemic....
Physician-staffed ambulance and increased in-hospital mortality of hypotensive trauma patients following prolonged prehospital stay: A nationwide study
Physician-staffed ambulance and increased in-hospital mortality of hypotensive trauma patients following prolonged prehospital stay: A nationwide study
BACKGROUND
The benefits of physician-staffed emergency medical services (EMS) for trauma patients remain unclear because of the conflicting results on survival. Some st...
IoT based Automated Siren using Solar Power
IoT based Automated Siren using Solar Power
Now a day’s college siren is operated manually. It replaces the manual switching of the siren in the college. The intension of this project is to implement IOT based automatic alar...
Smart Ambulance Traffic Control System
Smart Ambulance Traffic Control System
The traffic lights control system is broadly implemented to track and control the flow of vehicles through the intersection of multiple roads. Nevertheless, the synchronization of ...
Refining ambulance clinical response models: The impact on ambulance response and emergency department presentations
Refining ambulance clinical response models: The impact on ambulance response and emergency department presentations
AbstractObjectiveThe ambulance service in Victoria, Australia implemented a revised clinical response model (CRM) in 2016 which was designed to increase the diversion of low‐acuity...
Geo-Location Based Emergency Ambulance Booking Service using Android
Geo-Location Based Emergency Ambulance Booking Service using Android
In India, a Person Dies Every Moment Because He Did Not Receive Proper Health Care in an Emergency. Despite All the Facts, We Know the Importance of Emergency Health Care in Such a...
DOES DEMENTIA MATTER: IS DEMENTIA AN IMPORTANT FACTOR IN 999 CALL-OUTS TO OLDER PEOPLE?
DOES DEMENTIA MATTER: IS DEMENTIA AN IMPORTANT FACTOR IN 999 CALL-OUTS TO OLDER PEOPLE?
BackgroundCare for older people with dementia (OPWD) is a major concern across all care settings. Ambulance services are in the spotlight as pressures on emergency services and cal...

