期刊论文详细信息
IEEE Access
A Trajectory Clustering Method Based on Moving Index Analysis and Modeling
Yuqing Yang1  Xujun Zhao1  Jianghui Cai1  Jing Liu1  Haifeng Yang1 
[1] School of Computer Science and Technology, Taiyuan University of Science and Technology, Taiyuan, China;
关键词: Trajectory clustering;    moving index;    stop points extraction;    moving index Gaussian model;   
DOI  :  10.1109/ACCESS.2022.3168993
来源: DOAJ
【 摘 要 】

Aiming at the problem of low trajectory clustering accuracy caused by only focusing on the characteristics of Stop Points, this paper analyses the features of both the Stop and the Move Points and proposes a trajectory clustering method based on the moving index analysis and modelling. Firstly, the different characteristics of the trajectory points are explored, and each feature is analysed and evaluated by experiments. On this basis, the PD (Point Density) and MC (Movement characteristic) are selected to define a new moving index (MPD) to evaluate the movement performance of different types of points. Secondly, a trajectory clustering algorithm called PMS (Points Moving Index Analysis and Modelling) is proposed. This algorithm finds the Stop Points by the following steps. (1) Obtaining the candidate move points with the help of PD. (2) Calculating the MPD of all the points to approximate the trajectory points. (3) Establishing a MIGM (Moving Index Gaussian model) model based on the MPD representation. (4) Fitting all the trajectories and extracting the points that are not fitted by MIGM. (5) Judging whether the extracted points satisfy the convergence condition. If the convergence condition is satisfied, the extracted points are Stop Points. Otherwise, adjust the radius ${R}$ and repeat the above four steps. Experimental results show that this method can reduce error merging of adjacent clusters and find the trajectory clusters of Stop Points with different shapes.

【 授权许可】

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