Abstract

In the data mining of road networks, trajectory clustering of moving objects plays an important role in many applications. Most existing algorithms for this problem are based on every position point in a trajectory and face a significant challenge in dealing with complex and length-varying trajectories. This paper proposes a grid-based whole trajectory clustering model (GBWTC) in road networks, which regards the trajectory as a whole. In this model, we first propose a trajectory mapping algorithm based on grid estimation, which transforms the trajectories in road network space into grid sequences in grid space and forms grid trajectories by recognizing and eliminating redundant, abnormal, and stranded information of grid sequences. We then design an algorithm to extract initial clustering centers based on density weight and improve a shape similarity measuring algorithm to measure the distance between two grid trajectories. Finally, we dynamically allocate every grid trajectory to the best clusters by the nearest neighbor principle and an outlier function. For the evaluation of clustering performance, we establish a clustering criterion based on the classical Silhouette Coefficient to maximize intercluster separation and intracluster homogeneity. The clustering accuracy and performance superiority of the proposed algorithm are illustrated on a real-world dataset in comparison with existing algorithms.

Highlights

  • With the advancement of Global Position System (GPS) technology and the growing economy, people’s travel is becoming fast and convenient

  • Our work makes the following technical contributions to the area of trajectory clustering: (i) A grid cell space is defined for the scattered and changing trajectory data, and an effective mapping algorithm based on grid estimation is designed to transform the complex trajectories in the road network space into the plane grid trajectories in the grid cell space with the original spatial structure preserved (ii) A clustering algorithm of whole grid trajectories is proposed based on center density rule, shape similarity measure, and anomaly function

  • We propose a grid-based whole trajectory clustering model in the road network environment, which is aimed at solving the problem of inefficient clustering caused by redundant trajectory points in the road network and inaccurate positioning

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Summary

Introduction

With the advancement of Global Position System (GPS) technology and the growing economy, people’s travel is becoming fast and convenient. Yanagisawa et al [11] represented the trajectory data as the directed line segments in space and defined the similarity between trajectories as the Euclidean distance between the directed discrete lines, but the algorithm can only compare the trajectories with the same time interval or the same length To solve this problem, several methods based on warping distance are defined in literatures [12, 13], while Lin and Su [14] propose a method to compare the space shape of trajectory. (i) A grid cell space is defined for the scattered and changing trajectory data, and an effective mapping algorithm based on grid estimation is designed to transform the complex trajectories in the road network space into the plane grid trajectories in the grid cell space with the original spatial structure preserved (ii) A clustering algorithm of whole grid trajectories is proposed based on center density rule, shape similarity measure, and anomaly function.

Related Work
Problem Statement
A Grid-Based Whole Trajectory Clustering Model
Experimental Evaluation
Findings
Conclusion
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