Yufan Wang, Zijing Wang, Kai Ming Ting, Yuanyi Shang
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引用次数: 0
摘要
本文旨在解决现有轨迹相似性测量中的两大难题:计算效率低下和缺乏距离函数应保证的 "唯一性 "属性:当且仅当 X = Y 时,dist(X, Y ) = 0,其中 X 和 Y 是两条轨迹。在这项工作中,我们基于核均值嵌入框架,提出了一种利用分布核进行轨迹表示和相似性测量的新方法。这是首次将分布核用于轨迹表示和相似性测量。我们的方法不依赖于点对点距离,而现有的大多数轨迹距离都使用点对点距离。与流行的学习和深度学习方法不同,我们的方法无需学习。我们在异常轨迹和子轨迹检测中展示了这种新方法的通用性。我们发现分布核具有(i)数据依赖性和 "唯一性 "属性,这是导致其在特定任务中性能优越的关键因素,以及(ii)运行时间比现有距离测量方法快几个数量级。
A Principled Distributional Approach to Trajectory Similarity Measurement and its Application to Anomaly Detection
This paper aims to solve two enduring challenges in existing trajectory similarity measures: computational inefficiency and the absence of the ‘uniqueness’ property that should be guaranteed in a distance function: dist(X, Y ) = 0 if and only if X = Y , where X and Y are two trajectories. In this work, we present a novel approach utilizing a distributional kernel for trajectory representation and similarity measurement, based on the kernel mean embedding framework. It is the very first time a distributional kernel is used for trajectory representation and similarity measurement. Our method does not rely on point-to-point distances which are used in most existing distances for trajectories. Unlike prevalent learning and deep learning approaches, our method requires no learning. We show the generality of this new approach in anomalous trajectory and sub-trajectory detection. We identify that the distributional kernel has (i) a data-dependent property and the ‘uniqueness’ property which are the key factors that lead to its superior task-specific performance, and (ii) runtime orders of magnitude faster than existing distance measures.
期刊介绍:
JAIR(ISSN 1076 - 9757) covers all areas of artificial intelligence (AI), publishing refereed research articles, survey articles, and technical notes. Established in 1993 as one of the first electronic scientific journals, JAIR is indexed by INSPEC, Science Citation Index, and MathSciNet. JAIR reviews papers within approximately three months of submission and publishes accepted articles on the internet immediately upon receiving the final versions. JAIR articles are published for free distribution on the internet by the AI Access Foundation, and for purchase in bound volumes by AAAI Press.