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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Towards Better Detection and Analysis of Massive Spatiotemporal Co-Occurrence Patterns
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Towards Better Detection and Analysis of Massive Spatiotemporal Co-Occurrence Patterns

机译:为了更好地检测和分析大规模的时空共生模式

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摘要

With the rapid development of sensing technologies, massive spatiotemporal data have been acquired from the urban space with respect to different domains, such as transportation and environment. Numerous co-occurrence patterns (e.g., traffic speed < 10km/h, weather = foggy, and air quality = unhealthy) between the transportation data and other types of data can be obtained with given spatiotemporal constraints (e.g., within 3 kilometers and lasting for 2 hours) from these heterogeneous data sources. Such patterns present valuable implications for many urban applications, such as traffic management, pollution diagnosis, and transportation planning. However, extracting and understanding these patterns is beyond manual capability because of the scale, diversity, and heterogeneity of the data. To address this issue, a novel visual analytics system called CorVizor is proposed to identify and interpret these co-occurrence patterns. CorVizor comprises two major components. The first component is a co-occurrence mining framework involving three steps, namely, spatiotemporal indexing, co-occurring instance generation, and pattern mining. The second component is a visualization technique called CorView that implements a level-of-detail mechanism by integrating tailored visualizations to depict the extracted spatiotemporal co-occurrence patterns. The case studies and expert interviews are conducted to demonstrate the effectiveness of CorVizor.
机译:随着传感技术的快速发展,在城市空间中获得了大规模的时空数据,以及不同领域,如运输和环境。在给定的时空约束可以获得运输数据和其他类型的数据之间的许多共发生模式(例如,交通速度<10km / h,天气=有雾和空气质量=不健康)(例如,在3公里内并持续到来自这些异构数据来源的2小时。这些模式为许多城市应用提供了有价值的影响,例如交通管理,污染诊断和运输计划。但是,由于数据的规模,多样性和异质性,提取和理解这些模式超出了手动功能。为了解决这个问题,提出了一种名为Corvizor的新型视觉分析系统,以识别和解释这些共同发生模式。 Corvizor包括两个主要组件。第一组分是一种共同发生的矿业框架,包括三个步骤,即时空指数,共同发生的实例生成和模式挖掘。第二组件是一种名为Corview的可视化技术,通过整合定制的可视化来描绘提取的时空共同发生模式来实现细节水平机制。进行案例研究和专家访谈以证明蛹虫的有效性。

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