Alruwaili Madallah, Ali Ali, Almutairi Mohammed, Alsahyan Abdulaziz, Mohamed Mahmood
Department of Computer Engineering and Networks, College of Computer and Information Sciences, Jouf University, Sakaka, Aljouf, Kingdom of Saudi Arabia.
Department of Information Systems and Technology, Faculty of Graduate Studies for Statistical Research, Cairo University, Giza, Egypt.
Sci Rep. 2025 Feb 19;15(1):6011. doi: 10.1038/s41598-025-89651-4.
Traffic congestion, particularly in rapidly expanding urban centers, significantly impacts the timely delivery of emergency medical services (EMS), where every minute can mean the difference between life and death. Traditional traffic signal control systems often lack real-time adaptability to prioritize emergency vehicles, resulting in delays caused by congestion around ambulances. To address this critical issue, this paper presents an AI-driven real-time traffic management system designed to reduce EMS response times. The proposed solution incorporates three core components: Raspberry Pi-based traffic signal prioritization, deep learning-enabled audio-visual ambulance detection, and an advanced intelligent traffic management framework. For audio detection, raw data is transformed into spectrograms using Mel Frequency Cepstral Coefficients (MFCCs) and classified using a Long Short-Term Memory (LSTM) network. Visual data is processed through a ResNet18 convolutional neural network, pre-trained on ImageNet using inductive transfer learning. The outputs from the auditory and visual streams are integrated using empirical risk minimization, enabling accurate ambulance detection through multimodal data fusion. Performance evaluation demonstrates the effectiveness of the proposed system, achieving 98.3% accuracy in audio classification, 98.1% accuracy in visual classification, and 99% accuracy with the fused model. Additional metrics, including precision, recall, F1-score, and a confusion matrix, confirm the model's reliability. This innovative system has the potential to transform urban traffic networks into intelligent, adaptive systems, reducing delays caused by traffic congestion, enhancing emergency medical care response times, and ultimately saving lives. The framework offers a scalable blueprint for future smart city traffic management solutions, meticulously designed to support urban growth and expansion.
交通拥堵,尤其是在快速扩张的城市中心,对紧急医疗服务(EMS)的及时送达产生了重大影响,在这种情况下,每一分钟都可能意味着生死之差。传统的交通信号控制系统往往缺乏实时适应性来优先处理应急车辆,导致救护车周围因拥堵而出现延误。为了解决这一关键问题,本文提出了一种人工智能驱动的实时交通管理系统,旨在减少紧急医疗服务的响应时间。所提出的解决方案包含三个核心组件:基于树莓派的交通信号优先排序、基于深度学习的视听救护车检测以及先进的智能交通管理框架。对于音频检测,原始数据使用梅尔频率倒谱系数(MFCC)转换为频谱图,并使用长短期记忆(LSTM)网络进行分类。视觉数据通过一个在ImageNet上使用归纳迁移学习进行预训练的ResNet18卷积神经网络进行处理。听觉和视觉流的输出使用经验风险最小化进行整合,通过多模态数据融合实现准确的救护车检测。性能评估证明了所提出系统的有效性,在音频分类中准确率达到98.3%,在视觉分类中准确率达到98.1%,融合模型的准确率达到99%。包括精确率、召回率、F1分数和混淆矩阵在内的其他指标证实了该模型的可靠性。这种创新系统有可能将城市交通网络转变为智能、自适应系统,减少交通拥堵造成的延误,提高紧急医疗护理的响应时间,并最终挽救生命。该框架为未来智慧城市交通管理解决方案提供了一个可扩展的蓝图,经过精心设计以支持城市的增长和扩张。