基于增强特征提取和多分辨率学习的驾驶员移动指纹识别

Mahan Tabatabaie, Suining He, Xi Yang
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引用次数: 7

摘要

考虑到驾驶员历史GPS轨迹的可用性,给定新的GPS轨迹,驾驶员移动指纹(DMF)识别旨在(i)确定生成的轨迹是否属于潜在驾驶员,以及(ii)根据驾驶员的历史数据检测轨迹是否可能异常。先前的研究通常考虑手工制作的特征工程技术来提取dmf,而上下文因素如天气和兴趣点(poi)几乎没有考虑在内,这可能无法获得令人满意的识别结果。为了解决上述问题,我们提出了一种基于增强特征提取和多分辨率学习的新框架RM-Drive。具体来说,我们首先采用时空逆强化学习(ST-IRL)从历史轨迹中提取dmf。然后,利用多分辨率轨迹嵌入网络(MTE-Net)将提取的dmf与上下文因素融合,生成轨迹嵌入;我们提出的MTE-Net由多分辨率卷积神经网络(MR-CNN)组成,使模型能够学习dmf的多分辨率特征。最后,我们利用轨迹嵌入进行驾驶员分类和异常检测。我们在两个真实世界的数据集上对RM-Drive进行了广泛的评估研究,我们的结果表明,基于几个评估指标,包括准确性、精密度和召回率等,驾驶员分类和异常检测的性能平均分别提高了21%和11%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforced Feature Extraction and Multi-Resolution Learning for Driver Mobility Fingerprint Identification
Taking into account the availability of the historical GPS trajectories of drivers, given a new GPS trajectory, Driver mobility fingerprint (DMF) identification aims at (i) determining whether a generated trajectory belongs to a potential driver, and (ii) detecting if a trajectory is likely anomalous based on a driver's historical data. Prior studies often consider hand-crafted feature engineering techniques to extract DMFs while contextual factors like weather and points-of-interest (POIs) are hardly accounted for, which might not achieve satisfactory identification results. To address above, we propose RM-Drive, a novel framework based on reinforced feature extraction and multi-resolution learning. Specifically, we first employ spatio-temporal inverse reinforcement learning (ST-IRL) to extract DMFs from historical trajectories. Then, we generate trajectory embeddings by fusing the extracted DMFs and the contextual factors using the multi-resolution trajectory embedding network (MTE-Net). Our proposed MTE-Net consists of multi-resolution convolutional neural network (MR-CNN), which enables the model to learn the multi-resolution features of the DMFs. Finally, we leverage the trajectory embeddings for the driver classification and anomaly detection. We have conducted extensive evaluation studies upon RM-Drive with two real-world datasets, and our results demonstrate the performance improvements from the state-of-the-art of driver classification and anomaly detection respectively by 21% and 11% on average based on several evaluation metrics, including accuracy, precision, and recall, etc.
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