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Online discovery of co-movement patterns in mobility data

Andreas Tritsarolis, George-Stylianos Theodoropoulos, Yannis Theodoridis

2020International Journal of Geographical Information Systems15 citationsDOI

Abstract

The advent of GPS technologies generates location data-streams and accentuates the importance of developing practical tools that can process and analyze the vast amounts of location data at a given moment in a meaningful way. Profiling the trajectory of a moving object with respect to the trajectories of its surrounding objects, for example, can elicit its mobility behaviour and analyze it in order to inform domain experts with critical knowledge in real time. For instance, clustering multiple moving objects with respect to their spatial and temporal dimension to identify co-movement patterns. In this paper, we propose a novel graph-based online co-movement pattern mining algorithm, called EvolvingClusters, which can be used to discover different collective movement behaviours (like the well-known flocks and convoys) in a unified way based on the activity of multiple concurrent objects through time and space. We evaluate EvolvingClusters using real-world and synthetic datasets from multiple mobility domains. Our study demonstrates the effectiveness of the proposed algorithm as well as its value towards a tool to profile semantically rich behaviour and with capabilities to observe and categorize multiple moving objects in real-time.

Topics & Concepts

Computer scienceData miningCategorizationCluster analysisData stream miningProfiling (computer programming)Global Positioning SystemGraphDomain (mathematical analysis)Artificial intelligenceData scienceTheoretical computer scienceMathematicsMathematical analysisOperating systemTelecommunicationsData Management and AlgorithmsHuman Mobility and Location-Based AnalysisData Mining Algorithms and Applications
Online discovery of co-movement patterns in mobility data | Litcius