Crowdsourcing-based Urban Anomaly Prediction System for Smart Cities

Chao Huang, X. Wu, Dong Wang
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引用次数: 35

Abstract

Crowdsourcing has become an emerging data collection paradigm for smart city applications. A new category of crowdsourcing-based urban anomaly reporting systems have been developed to enable pervasive and real-time reporting of anomalies in cities (e.g., noise, illegal use of public facilities, urban infrastructure malfunctions). An interesting challenge in these applications is how to accurately predict an anomaly in a given region of the city before it happens. Prior works have made significant progress in anomaly detection. However, they can only detect anomalies after they happen, which may lead to significant information delay and lack of preparedness to handle the anomalies in an efficient way. In this paper, we develop a Crowdsourcing-based Urban Anomaly Prediction Scheme (CUAPS) to accurately predict the anomalies of a city by exploring both spatial and temporal information embedded in the crowdsourcing data. We evaluated the performance of our scheme and compared it to the state-of-the-art baselines using four real-world datasets collected from 311 service in the city of New York. The results showed that our scheme can predict different categories of anomalies in a city more accurately than the baselines.
基于众包的智慧城市异常预测系统
众包已成为智慧城市应用的新兴数据收集范式。一种新的基于众包的城市异常报告系统已经被开发出来,可以对城市中的异常(例如噪音、非法使用公共设施、城市基础设施故障)进行普遍和实时的报告。在这些应用程序中,一个有趣的挑战是如何在异常发生之前准确地预测城市给定区域的异常。以往的工作在异常检测方面取得了重大进展。然而,它们只能在异常发生后才发现,这可能会导致严重的信息延迟和缺乏有效处理异常的准备。在本文中,我们开发了一个基于众包的城市异常预测方案(CUAPS),通过挖掘嵌入在众包数据中的空间和时间信息来准确预测城市的异常。我们评估了我们的方案的性能,并使用从纽约市311服务收集的四个真实数据集将其与最先进的基线进行了比较。结果表明,该方案能较基线更准确地预测城市不同类型的异常。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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