Using Twitter to Enhance Traffic Incident Awareness

Shen Zhang
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引用次数: 15

Abstract

Automatic incident detection is an important component of intelligent transportation management systems that provides information for emergency traffic control and management purposes. Social media are rapidly emerging as a novel avenue for the contribution and dissemination of information that has immense value for increasing awareness of traffic incidents. In this paper, we endeavor to assess the potential of the use of harvested tweets for traffic incident awareness. A hybrid mechanism based on Latent Dirichlet Allocation (LDA) and document clustering is proposed to model incident-level semantic information, while spatial point pattern analysis is applied to explore the spatial patterns. A global Monte Carlo K-test indicates that the incident-topic tweets are significantly clustered at different scales up to 600m. Then a density-based algorithm successfully detects the clusters of tweets posted spatially close to traffic incidents. The experiments support the notion that social media feeds act as sensors, which allow enhancing awareness of traffic incidents and their potential disturbances.
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利用推特提高交通事故意识
事故自动检测是智能交通管理系统的重要组成部分,为应急交通控制和管理提供信息。社交媒体正迅速成为贡献和传播信息的新途径,对提高对交通事故的认识具有巨大价值。在本文中,我们努力评估利用收获的推文进行交通事故意识的潜力。提出了一种基于潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)和文档聚类的混合机制来建模事件级语义信息,同时利用空间点模式分析来探索空间模式。全局蒙特卡洛k检验表明,事件主题推文在不同尺度上显著聚类,最高可达600m。然后,基于密度的算法成功地检测到在空间上接近交通事件的推文集群。这些实验支持了这样一种观点,即社交媒体信息流起到了传感器的作用,可以提高人们对交通事故及其潜在干扰的认识。
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