Analyzing Semantically Enriched Trajectories

Jana Seep
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Abstract

Abstract In order to understand what influences the movement of an object or person it is important to consider a variety of factors. These could be the visibility of certain landmarks, the current temperature or the presence of a crowded area to be avoided. These insights then can be used to understand movement in the public sector and improve our build environment, e.g. to reduce street traffic accidents or orientation in complex buildings. The following extended abstract is a summary of a doctoral thesis submitted to the University of Münster. The thesis was successfully defended in February 2023 [16]. The dissertation focuses on the analysis of so-called semantically enriched trajectories , which are used to describe observed movement. It proposes a new model based on an extended finite state machine, which allows for the representation and consideration of the information about the context of the trajectory. With the new model, we consider two main steps in trajectory analysis: First, we aim to infer a semantically enriched representative trajectory for a given cluster of trajectories. Second, we introduce a variation of the well-known k-means algorithm to calculate clusters based on the given context of trajectories. To show semantic feasibility of our approach, we conclude this work by evaluating the possibility to provide decision support for domain experts in two different public sector related contexts.
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分析语义丰富的轨迹
为了了解影响物体或人的运动的因素,考虑各种因素是很重要的。这些可能是某些地标的可见度,当前的温度或需要避开的拥挤区域的存在。这些见解可以用来了解公共部门的运动和改善我们的建筑环境,例如减少街道交通事故或复杂建筑的方向。以下是一篇提交给明尼苏达大学的博士论文摘要。论文于2023年2月成功答辩。本文的重点是分析所谓的语义丰富的轨迹,这是用来描述观察到的运动。提出了一种基于扩展有限状态机的新模型,该模型允许对轨迹上下文信息进行表示和考虑。在新模型中,我们考虑了轨迹分析的两个主要步骤:首先,我们的目标是为给定的轨迹簇推断一个语义丰富的代表性轨迹。其次,我们引入了著名的k-means算法的一种变体,根据给定的轨迹上下文计算聚类。为了展示我们的方法在语义上的可行性,我们通过评估在两种不同的公共部门相关背景下为领域专家提供决策支持的可能性来结束这项工作。
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