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Robust inferences of travel paths from GPS trajectories

机译:从GPS轨迹得出行进路径的可靠推断

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Monitoring and predicting traffic conditions are of utmost importance in reacting to emergency events in time and for computing the real-time shortest travel-time path. Mobile sensors, such as GPS devices and smartphones, are useful for monitoring urban traffic due to their large coverage area and ease of deployment. Many researchers have employed such sensed data to model and predict traffic conditions. To do so, we first have to address the problem of associating GPS trajectories with the road network in a robust manner. Existing methods rely on point-by-point matching to map individual GPS points to a road segment. However, GPS data is imprecise due to noise in GPS signals. GPS coordinates can have errors of several meters and, therefore, direct mapping of individual points is error prone. Acknowledging that every GPS point is potentially noisy, we propose a radically different approach to overcome inaccuracy in GPS data. Instead of focusing on a point-by-point approach, our proposed method considers the set of relevant GPS points in a trajectory that can be mapped together to a road segment. This clustering approach gives us a macroscopic view of the GPS trajectories even under very noisy conditions. Our method clusters points based on the direction of movement as a spatial-linear cluster, ranks the possible route segments in the graph for each group, and searches for the best combination of segments as the overall path for the given set of GPS points. Through extensive experiments on both synthetic and real datasets, we demonstrate that, even with highly noisy GPS measurements, our proposed algorithm outperforms state-of-the-art methods in terms of both accuracy and computational cost.
机译:监视和预测交通状况对于及时响应紧急事件以及计算实时最短旅行时间路径至关重要。 GPS设备和智能手机之类的移动传感器因其覆盖面积大且易于部署,可用于监视城市交通。许多研究人员已经利用这种感测到的数据来建模和预测交通状况。为此,我们首先必须以健壮的方式解决将GPS轨迹与道路网络相关联的问题。现有方法依赖点对点匹配将单个GPS点映射到路段。但是,由于GPS信号中的噪声,GPS数据不精确。 GPS坐标可能有几米的误差,因此直接映射各个点很容易出错。认识到每个GPS点都有潜在的噪音,我们提出了一种完全不同的方法来克服GPS数据中的不准确性。我们提出的方法没有关注点对点方法,而是考虑了轨迹中的一组相关GPS点,这些轨迹可以一起映射到路段。即使在非常嘈杂的条件下,这种聚类方法也可以使我们从宏观上观察GPS轨迹。我们的方法基于运动方向将点聚类为空间线性聚类,在每个组的图形中对可能的路线段进行排名,并搜索段的最佳组合作为给定GPS点集的整体路径。通过在合成数据集和真实数据集上进行的大量实验,我们证明,即使GPS噪声很大,我们提出的算法在准确性和计算成本方面也优于最新方法。

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