Emergency response is highly dependent on the time of incident reporting. Unfortunately, the traditional approach to receiving incident reports (e.g., calling 911 in the USA) has time delays. Crowdsourcing platforms such as Waze provide an opportunity for early identification of incidents. However, detecting incidents from crowdsourced data streams is difficult due to the challenges of noise and uncertainty associated with such data. Further, simply optimizing over detection accuracy can compromise spatial-temporal localization of the inference, thereby making such approaches infeasible for real-world deployment. This paper presents a novel problem formulation and solution approach for practitioner-centered incident detection using crowdsourced data by using emergency response management as a case-study. The proposed approach CROME (Crowdsourced Multi-objective Event Detection) quantifies the relationship between the performance metrics of incident classification (e.g., F1 score) and the requirements of model practitioners (e.g., 1 km. radius for incident detection). First, we show how crowdsourced reports, ground-truth historical data, and other relevant determinants such as traffic and weather can be used together in a Convolutional Neural Network (CNN) architecture for early detection of emergency incidents. Then, we use a Pareto optimization-based approach to optimize the output of the CNN in tandem with practitioner-centric parameters to balance detection accuracy and spatial-temporal localization. Finally, we demonstrate the applicability of this approach using crowdsourced data from Waze and traffic accident reports from Nashville, TN, USA. Our experiments demonstrate that the proposed approach outperforms existing approaches in incident detection while simultaneously optimizing the needs for real-world deployment and usability.
翻译:紧急反应高度取决于事件报告的时间。 不幸的是,接收事件报告的传统方法(例如在美国呼叫911)有时间延误。Waze等众包平台为早期识别事件提供了一个机会。然而,由于与这类数据相关的噪音和不确定性的挑战,很难从众包数据流中发现事件。此外,仅仅优化检测准确度可能损害推断的空间时空定位,从而使此类方法无法用于真实世界的部署。本文通过使用应急反应管理作为案例研究,为使用众包数据来检测以业者为中心的事件提供了一个新的问题拟订和解决方案。拟议的CROME(众包多目标事件探测)方法将事件分类的性能指标(例如,F1评分)与模型操作者的要求(例如,1公里/事件检测的半径)之间的关系缩小了。首先,我们展示了以众包为基础的方法、地面评估性历史数据,以及其它相关的CN决定因素,例如以众包数据为基础,利用应急反应管理管理方式检测,同时在最后的州际网络中,将我们当前测测算中,将当前测算的准确性数据与我们当前测算中的最佳数据用于当前测算。