Data Acquisition, Processing, and Predictive Analytics, NCBC, Ziauddin University, Karachi, Pakistan.
Aror University of Art, Architecture, Design and Heritage, Sukker, Pakistan.
Sci Data. 2022 Oct 4;9(1):599. doi: 10.1038/s41597-022-01727-2.
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.
交通拥堵、事故和污染正成为研究人员面临的挑战。开发新的理念来解决这些问题至关重要,无论是通过改善基础设施还是应用最新技术来更好地利用现有基础设施。本研究论文提出了一个高分辨率数据集,将有助于研究界将人工智能技术应用于从交通和道路噪音中分类任何应急车辆。对这类数据集的需求很高,因为它们可以控制交通流量,减少交通拥堵。它还可以提高应急响应时间,特别是在火灾和健康事件方面。这项工作使用不同的方法收集音频数据,并对其进行预处理,以开发高质量和干净的数据集。该数据集分为两个标记类,一个用于应急车辆警报器,另一个用于交通噪音。所开发的数据集提供了高质量和广泛的真实交通声音和应急车辆警报器。数据集的技术有效性也得到了确立。