快速轨迹简化的轻量级框架

Ziquan Fang, Changhao He, Lu Chen, Danlei Hu, Qichen Sun, Linsen Li, Yunjun Gao
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引用次数: 0

摘要

无处不在的GPS传感器从运动物体中收集大量的轨迹数据,这在数据挖掘应用中非常有用。然而,由于轨迹数据量巨大,直接存储和处理原始数据的成本很高。利用轨迹简化,可以将轨迹简化为一组连续的线段,并且数据丢失是可以接受的,是一种有效的方法。尽管提出了许多算法,但它们仍然存在以下问题,包括:(1)非数据驱动能力,因为大多数研究依赖于人工制定的规则或预定义的参数;(2)与误差测量相绑定,产生较高的计算成本;(3)只关注轨迹中的局部信息保存,而未能捕获轨迹压缩的全局移动模式。为了解决上述问题,我们提出了一个Seq2Seq2Seq框架,简称S3,它由两个链式Seq2Seq组成。通过可微分重建学习,S3以轻量级的方式实现了自监督轨迹简化。此外,我们在图神经架构上部署了S3,以捕获上下文感知的移动模式,并通过地理语义增强轨迹的表示范式,其中设计了上下文感知的距离度量用于质量评估。还开发了S3的在线扩展,以简化流轨迹。最后,在离线和在线场景中使用两个真实世界数据集的广泛实验表明,与非学习和最先进的基于学习的方法相比,S3实现了更高的效率(例如,它实现了高达一个数量级的加速增益)和相当的压缩质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Lightweight Framework for Fast Trajectory Simplification
The ubiquitous GPS sensors collect massive trajectory data from moving objects, which is useful in data mining applications. However, trajectory data is enormous in volume, and thus, directly storing and processing the raw data is expensive. Using trajectory simplification, a trajectory can be reduced to a set of continuous line segments with acceptable data loss, which is an efficient method. Although many algorithms are proposed, they still suffer from the following issues including (i) non-data driven capability as most studies rely on human-crafted rules or pre-defined parameters, (ii) bound with error measures that yield high computational cost, and (iii) focusing only on the local information preservation in trajectories, but failing in capturing the global mobility patterns for trajectory compression.To address the above issues, we propose a Seq2Seq2Seq framework, abbreviated S3, which consists of two chained Seq2Seq. With differentiable reconstruction learning, S3 enables self-supervised trajectory simplification in a lightweight manner. Besides, we deploy S3 over the graph neural architecture to capture the context-aware mobility patterns and enhance the representation paradigm of trajectories with geographical semantics, where a context-aware distance measure is designed for quality evaluation. An online extension of S3 is also developed to enable streaming trajectory simplifications. Finally, extensive experiments using two real-world datasets in both offline and online scenarios show that S3 achieves much higher efficiency (e.g., it achieves up to one order of magnitude speed-up gains) and comparable compression quality, compared with both non-learning and state-of-the-art learning-based methods.
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