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SaferCity: A System for Detecting and Analyzing Incidents from Social Media

机译:安全城市:一种用于检测和分析社交媒体事件的系统

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This paper presents a system to identify and characterise public safety related incidents from social media, and enrich the situational awareness that law enforcement entities have on potentially-unreported activities happening in a city. The system is based on a new spatio-temporal clustering algorithm that is able to identify and characterize relevant incidents given even a small number of social media reports. We present a web-based application exposing the features of the system, and demonstrate its usefulness in detecting, from Twitter, public safety related incidents occurred in New York City during the Occupy Wall Street protests.
机译:本文提供了一种系统,该系统可以识别和表征来自社交媒体的与公共安全相关的事件,并增强执法机构对城市中可能未报告的活动的态势感知。该系统基于新的时空聚类算法,即使在少数社交媒体报告的情况下,该算法也能够识别和表征相关事件。我们提供了一个基于Web的应用程序,公开了该系统的功能,并展示了其在检测来自占领华尔街抗议活动期间在纽约市发生的与公共安全相关的事件中的有用性。

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