基于轨迹相似度和二维小波变换的时空血管轨迹平滑

Xinyi Li, Zhao Liu, Zheng Liu, R. W. Liu, Zikun Feng
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引用次数: 3

摘要

基于ais的船舶轨迹数据越来越多地应用于学术研究和解决实际问题,我们提出了一种将轨迹相似度与二维小波变换相结合的方法来处理数据中不可避免的噪声。利用所提出的平滑方案,首先引入轨迹相似度对经过合理分割得到的多个子轨迹进行聚类;特别地,欧拉距离可以作为轨迹相似度的度量。将子轨迹根据相似度进行分组匹配,利用二维小波变换对轨迹组进行分解重构,实现对轨迹组的去噪。通过提取和组合各组数据,最终获得高质量的船舶轨迹。大量的实验结果表明,该方法在保持轨迹原有特征的前提下,在定性和定量上都取得了较好的轨迹去噪效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-Temporal Vessel Trajectory Smoothing Based on Trajectory Similarity and Two-Dimensional Wavelet Transform
Motivated by the increasing utilization of AIS-based vessel trajectory data used in both academic research and solving practical issues, we present a new method by combining trajectory similarity with two-dimensional wavelet transform to cope with the inevitable noise in the data. Using the smoothing scheme proposed, trajectory similarity is firstly introduced to cluster several sub-trajectories obtained by reasonable segmentation. In particular, Euler distance is able to act as a measure of trajectory similarity. The sub-trajectories are matched into groups according to their similarities, and two-dimensional wavelet transform is developed to conduct the decomposition and reconstruction of trajectory groups, thus achieving the denoising of them. The final high-quality vessel trajectory is obtained by extracting and combining the data from the groups. Extensive experimental results have shown that the proposed method achieves excellent effect in trajectory denoising under the premise of retaining the original characteristics of the trajectory, in terms of both qualitatively and quantitatively.
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