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Visual Analytics Law Enforcement Toolkit

机译:视觉分析执法工具包

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摘要

We present VALET, a Visual Analytics Law Enforcement Toolkit for analyzing spatiotemporal law enforcement data. VALET provides users with a suite of analytical tools coupled with an interactive visual interface for data exploration and analysis. This system includes linked views and interactive displays that spatiotemporally model criminal, traffic and civil (CTC) incidents and allows officials to observe patterns and quickly identify regions with higher probabilities of activity. Our toolkit provides analysts with the ability to visualize different types of data sets (census data, daily weather reports, zoning tracts, prominent calendar dates, etc.) that provide an insight into correlations among CTC incidents and spatial demographics. In the spatial domain, we have implemented a kernel density estimation mapping technique that creates a color map of spatially distributed CTC events that allows analysts to quickly find and identify areas with unusually large activity levels. In the temporal domain, reports can be aggregated by day, week, month or year, allowing the analysts to visualize the CTC activities spatially over a period of time. Furthermore, we have incorporated temporal prediction algorithms to forecast future CTC incident levels within a 95% confidence interval. Such predictions aid law enforcement officials in understanding how hotspots may grow in the future in order to judiciously allocate resources and take preventive measures. Our system has been developed using actual law enforcement data and is currently being evaluated and refined by a consortium of law enforcement agencies.
机译:我们介绍VALET,这是一种用于分析时空执法数据的可视化分析执法工具包。 VALET为用户提供了一套分析工具,以及用于数据探索和分析的交互式可视界面。该系统包括链接的视图和交互式显示,可对犯罪,交通和民事(CTC)事件进行时空建模,并使官员能够观察模式并快速识别活动可能性较高的区域。我们的工具包使分析人员能够可视化不同类型的数据集(普查数据,每日天气报告,分区,重要的日历日期等),从而洞悉CTC事件与空间人口统计之间的相关性。在空间领域,我们已经实现了内核密度估计映射技术,该技术创建了空间分布的CTC事件的颜色图,从而使分析人员可以快速查找和识别活动水平异常大的区域。在时域中,可以按日,周,月或年汇总报告,从而使分析人员可以在一段时间内在空间上可视化CTC活动。此外,我们采用了时间预测算法来预测95%置信区间内的未来CTC事件水平。这样的预测有助于执法人员了解热点在未来的增长方式,从而明智地分配资源并采取预防措施。我们的系统是使用实际的执法数据开发的,目前正在由执法机构联盟进行评估和完善。

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