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Semantic Enrichment of Movement Behavior with Foursquare–A Visual Analytics Approach

机译:Foursquare的运动行为语义丰富化-一种视觉分析方法

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In recent years, many approaches have been developed that efficiently and effectively visualize movement data, e.g., by providing suitable aggregation strategies to reduce visual clutter. Analysts can use them to identify distinct movement patterns, such as trajectories with similar direction, form, length, and speed. However, less effort has been spent on finding the semantics behind movements, i.e. why somebody or something is moving. This can be of great value for different applications, such as product usage and consumer analysis, to better understand urban dynamics, and to improve situational awareness. Unfortunately, semantic information often gets lost when data is recorded. Thus, we suggest to enrich trajectory data with POI information using social media services and show how semantic insights can be gained. Furthermore, we show how to handle semantic uncertainties in time and space, which result from noisy, unprecise, and missing data, by introducing a POI decision model in combination with highly interactive visualizations. Finally, we evaluate our approach with two case studies on a large electric scooter data set and test our model on data with known ground truth.
机译:近年来,已经开发了许多方法,这些方法例如通过提供适当的聚集策略以减少视觉混乱而有效且有效地可视化运动数据。分析师可以使用它们来识别不同的运动模式,例如具有相似方向,形式,长度和速度的轨迹。但是,花费很少的精力来寻找运动背后的语义,即为什么某人或某物正在运动。对于不同的应用(例如产品使用和消费者分析),更好地了解城市动态并提高态势感知,这可能具有巨大的价值。不幸的是,语义信息经常在记录数据时丢失。因此,我们建议使用社交媒体服务通过POI信息丰富轨迹数据,并说明如何获得语义洞察。此外,我们通过结合高度交互的可视化介绍POI决策模型,展示了如何处理在时间和空间上的语义不确定性,这些不确定性是由嘈杂,不精确和丢失的数据引起的。最后,我们通过对大型电动踏板车数据集进行两个案例研究来评估我们的方法,并在已知地面真实性的数据上测试我们的模型。

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