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Spatial Generalization and Aggregation of Massive Movement Data

机译:海量运动数据的空间概括和聚合

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Movement data (trajectories of moving agents) are hard to visualize: numerous intersections and overlapping between trajectories make the display heavily cluttered and illegible. It is necessary to use appropriate data abstraction methods. We suggest a method for spatial generalization and aggregation of movement data, which transforms trajectories into aggregate flows between areas. It is assumed that no predefined areas are given. We have devised a special method for partitioning the underlying territory into appropriate areas. The method is based on extracting significant points from the trajectories. The resulting abstraction conveys essential characteristics of the movement. The degree of abstraction can be controlled through the parameters of the method. We introduce local and global numeric measures of the quality of the generalization, and suggest an approach to improve the quality in selected parts of the territory where this is deemed necessary. The suggested method can be used in interactive visual exploration of movement data and for creating legible flow maps for presentation purposes.
机译:运动数据(运动主体的轨迹)很难显示:轨迹的许多交叉点和重叠部分使显示变得混乱而难以辨认。有必要使用适当的数据抽象方法。我们建议一种用于运动数据的空间概括和聚合的方法,该方法可以将轨迹转换为区域之间的聚合流。假定没有给出预定义的区域。我们设计了一种特殊的方法将基础区域划分为适当的区域。该方法基于从轨迹提取重要点。由此产生的抽象传达了机芯的基本特征。可以通过该方法的参数来控制抽象程度。我们介绍了概括质量的局部和全局数值量度,并提出了一种在认为必要的地方提高选定区域质量的方法。所建议的方法可用于运动数据的交互式视觉探索以及用于创建演示目的的清晰流图。

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