Detecting anomalous trajectories has become an important task in many location-based applications. While many approaches have been proposed for this task, they suffer from various issues including (1) incapability of detecting anomalous subtrajectories, which are finer-grained anomalies in trajectory data, and/or (2) non-data driven, and/or (3) requirement of sufficient supervision labels which are costly to collect. In this paper, we propose a novel reinforcement learning based solution called RL4OASD, which avoids all aforementioned issues of existing approaches. RL4OASD involves two networks, one responsible for learning features of road networks and trajectories and the other responsible for detecting anomalous subtrajectories based on the learned features, and the two networks can be trained iteratively without labeled data. Extensive experiments are conducted on two real datasets, and the results show that our solution can significantly outperform the state-of-the-art methods (with 20-30% improvement) and is efficient for online detection (it takes less than 0.1ms to process each newly generated data point).
翻译:在许多基于地点的应用中,检测异常轨道已成为一项重要任务,虽然为这项任务提出了许多办法,但遇到各种问题,包括:(1) 无法探测异常轨道子轨道,这是轨道数据中细微的异常现象,和/或(2) 非数据驱动的,和/或(3) 要求有足够的监督标签,而收集成本很高。在本文件中,我们建议采用新的强化学习解决方案,称为RL4OASD, 避免所有上述现有方法的问题。RL4OASD涉及两个网络,一个负责公路网络和轨迹的学习特征,另一个负责根据所学的特征探测异常轨道子轨道,两个网络可以迭代训练,而没有贴标签数据。对两个真实数据集进行了广泛的实验,结果显示,我们的解决方案可以大大超越最新方法(改进了20-30%),并且对在线探测有效(处理每个新生成的数据点需要不到0.1米)。