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Incremental route inference from low-sampling GPS data: An opportunistic approach to online map matching

机译:来自低采样GPS数据的增量路由推断:在线地图匹配的机会态度方法

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With the surging of smart device sensing and mobile networking, GPS data has been widely available for identifying vehicle position and route on the road map. For many real-time applications, such as traffic sensing and route recommendation, it is critical to immediately infer travelling route with incoming GPS data. In this paper, an opportunistic approach to online map matching is proposed to incrementally infer routes from low-sampling GPS data with low output latency. Unlike the hidden Markov model (HMM)based approach, which often experiences certain delay between the GPS observation and inference, our algorithm can produce immediate inference when a new GPS point becomes available. Furthermore, a rollback mechanism is provided to correct the already inferred route when some abnormal situations are detected during the opportunistic inference process. We evaluate the proposed algorithm using real dataset of GPS trajectories over 100 cities around the world. Experimental results show that our algorithm is better than, or at least comparable to the state-of-the-art algorithms in terms of inference accuracy. More importantly, our algorithm can yield much shorter output latency and require less execution time, which is critical for many real-time navigation applications and location-based services. (C) 2019 Elsevier Inc. All rights reserved.
机译:随着智能设备传感和移动网络的飙升,GPS数据已广泛可用于识别车辆位置和路线图上的路线。对于许多实时应用程序,例如交通感应和路由推荐,立即使用传入的GPS数据立即推断出旅行路线至关重要。在本文中,提出了一种在线地图匹配的机会主义方法来逐步推断出从低输出延迟的低采样GPS数据的路由。与基于隐马尔可夫模型(HMM)的方法不同,这通常会经历GPS观察和推断之间的某些延迟,我们的算法可以在新的GPS点可用时立即推理。此外,提供回滚机构以在机会推断过程中检测到一些异常情况时校正已经推断的路由。我们使用GPS轨迹的真实数据集评估了世界各地100多个城市的真实数据集。实验结果表明,在推理准确性方面,我们的算法优于或至少与最先进的算法相当。更重要的是,我们的算法可以产生更短的输出延迟,并且需要更少的执行时间,这对于许多实时导航应用和基于位置的服务至关重要。 (c)2019 Elsevier Inc.保留所有权利。

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