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Large-scale audio dataset for emergency vehicle sirens and road noises

Muhammad Asif, Muhammad Usaid, Munaf Rashid, Tabarka Rajab, Samreen Hussain, Sarwar Wasi

2022Scientific Data27 citationsDOIOpen Access PDF

Abstract

Traffic congestion, accidents, and pollution are becoming a challenge for researchers. It is essential to develop new ideas to solve these problems, either by improving the infrastructure or applying the latest technology to use the existing infrastructure better. This research paper presents a high-resolution dataset that will help the research community to apply AI techniques to classify any emergency vehicle from traffic and road noises. Demand for such datasets is high as they can control traffic flow and reduce traffic congestion. It also improves emergency response time, especially for fire and health events. This work collects audio data using different methods, and pre-processed them to develop a high-quality and clean dataset. The dataset is divided into two labelled classes one for emergency vehicle sirens and one for traffic noises. The developed dataset offers high quality and range of real-world traffic sounds and emergency vehicle sirens. The technical validity of the dataset is also established.

Topics & Concepts

Computer scienceTraffic congestionScale (ratio)Transport engineeringQuality (philosophy)Emergency responseTraffic flow (computer networking)Emergency vehicleWork (physics)Vehicle Information and Communication SystemRoad trafficComputer securityTelecommunicationsEngineeringGeographyMechanical engineeringCartographyEpistemologyMedicineMedical emergencyPhilosophyMusic and Audio ProcessingSpeech and Audio ProcessingNoise Effects and Management
Large-scale audio dataset for emergency vehicle sirens and road noises | Litcius