Abstract

Detecting traffic events and their locations is important for an effective transportation management system and better urban policy making. Traffic events are related to traffic accidents, congestion, parking issues, to name a few. Currently, traffic events are detected through static sensors e.g., CCTV camera, loop detectors. However they have limited spatial coverage and high maintenance cost, especially in developing regions. On the other hand, with Web 2.0 and ubiquitous mobile platforms, people can act as social sensors sharing different traffic events along with their locations. We investigated whether Twitter – a social media platform can be useful to understand urban traffic events from tweets in India. However, such tweets are informal and noisy and containing vernacular geographical information making the location retrieval task challenging. So far most authors have used geotagged tweets to identify traffic events which accounted for only 0.1%-3% or sometimes less than that. Recently Twitter has removed precise geotagging, further decreasing the utility of such approaches. To address these issues, this research explored how ungeotagged tweets could be used to understand traffic events in India. We developed a novel framework that does not only categorize traffic related tweets but also extracts the locations of the traffic events from the tweet content in Greater Mumbai. The results show that an SVM based model performs best detecting traffic related tweets. While extracting location information, a hybrid georeferencing model consists of a supervised learning algorithm and a number of spatial rules outperforms other models. The results suggest people in India, especially in Greater Mumbai often share traffic information along with location mentions, which can be used to complement existing physical transport infrastructure in a cost-effective manner to manage transport services in the urban environment.

Highlights

  • U NDERSTANDING traffic conditions, both in real time and historically can help transport authorities manageManuscript received April 4, 2019; revised August 31, 2019 and October 6, 2019; accepted October 15, 2019

  • The results show that an Support Vector Machine (SVM) based model performs best detecting traffic related tweets

  • Since we aim to investigate if people mention placenames while tweeting about a traffic event in Greater Mumbai, we collected ungeotagged tweets from GNIP enabled PowerTrack 2.0 from Twitter repository using the premium service of DiscoverText2 [79]

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Summary

Introduction

U NDERSTANDING traffic conditions, both in real time and historically can help transport authorities manageManuscript received April 4, 2019; revised August 31, 2019 and October 6, 2019; accepted October 15, 2019. A further potential source are actively generated data, the subject of this paper, where individuals actively report on events through social media posts or microblogs [63], acting as social sensors, providing information about ongoing events, ranging from cultural festivals [7] through natural disasters [6] to the subject of this paper, traffic events [8], in a dynamic way [49]. The value of these data lies in their semantic richness: a single tweet reporting an accident at a specific location provides rich information about current and historical traffic conditions

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