支持基于事件的地理空间异常检测与地理可视化分析

O. Hoeber, M. Hasan
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引用次数: 2

摘要

收集描述相同现实世界事件的多个地理空间数据集在监测和执法情况中可能很有用(例如,独立跟踪渔船的航行地点和报告的捕鱼地点)。虽然在这些数据集之间发现明显的异常可能是一项简单的任务,但当数据集描述了许多覆盖大地理和时间范围的事件时,发现更微妙的不一致可能是一项挑战。本文提出了一种针对该问题领域的地理可视化分析方法,自动从数据中提取潜在的事件异常,在地图上可视化这些异常,并提供交互式过滤工具,以允许专家分析人员发现和分析感兴趣的模式。给出了一个案例研究,说明了该方法在发现商业渔船运动数据与其报告的捕鱼地点之间的异常方面的价值。现场试验评估证实了这种地理可视化分析方法在支持现实世界数据分析师需求方面的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supporting Event-based Geospatial Anomaly Detection with Geovisual Analytics
Collecting multiple geospatial datasets that describe the same real-world events can be useful in monitoring and enforcement situations (e.g., independently tracking where a fishing vessel travelled and where it reported to have fished). While finding the obvious anomalies between such datasets may be a simple task, discovering more subtle inconsistencies can be challenging when the datasets describe many events that cover large geographic and temporal ranges. This paper presents a geovisual analytics approach to this problem domain, automatically extracting potential event anomalies from the data, visualizing these on a map, and providing interactive filtering tools to allow expert analysts to discover and analyze patterns that are of interest. A case study is presented, illustrating the value of the approach for discovering anomalies between commercial fishing vessel movement data and their reported fishing locations. Field trial evaluations confirm the benefits of this geovisual analytics approach for supporting real-world data analyst needs.
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