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TAD: A trajectory clustering algorithm based on spatial-temporal density analysis

机译:TAD:基于时空密度分析的轨迹聚类算法

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In this paper, a novel trajectory clustering algorithm - TAD - is proposed to extract trajectory Stays based on spatial-temporal density analysis of data. Two new metrics - NMAST (Neighbourhood Move Ability and Stay Time) density function and NT (Noise Tolerance) factor - are defined in this algorithm. Firstly, NMAST integrates the characteristics of Neighbourhood Move Ability (NMA, extended from the concept of Move Ability MA), Stay Time (ST), and evaluation factor EA to measure the spatial-temporal density of data. Secondly, NT utilizes the features of noise to dynamically evaluate and reduce the influence of noise. The experimental results on Geolife dataset shows that the distributions hidden in data are extracted more realistically, especially for various complex or special trajectories with long-duration gaps. Furthermore, our analytical method of trajectory data is particularly applied in the spectra of LAMOST survey to analyse the variation characteristics of sky-background. The results show a regular distribution on observational date which is relatively concentrated in the month of 1, 10, 11, 12 in each year. The laws discovered in this work would provide a reasonable support for the designation of observational plans, and the new trajectory analysis method would also provide the services for the astronomical data analysis and then for the further studies of formation and evolution of the universe. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文提出了一种新的轨迹聚类算法TAD,该算法基于数据的时空密度分析提取轨迹停留。该算法定义了两个新的度量标准-NMAST(邻居移动能力和停留时间)密度函数和NT(噪声容限)因子。首先,NMAST集成了邻域移动能力(NMA,从移动能力MA的概念扩展而来),停留时间(ST)和评估因子EA的特征,以测量数据的时空密度。其次,NT利用噪声的特征来动态评估并减少噪声的影响。在Geolife数据集上的实验结果表明,隐藏在数据中的分布更真实地提取出来,尤其是对于具有较长时间间隔的各种复杂或特殊轨迹。此外,我们的轨迹数据分析方法特别适用于LAMOST测量的光谱,以分析天空背景的变化特征。结果显示,观测日期呈正态分布,相对集中在每年的1、10、11、12月份。这项工作中发现的定律将为指定观测计划提供合理的支持,新的轨迹分析方法还将为天文数据分析以及进一步研究宇宙的形成和演化提供服务。 (C)2019 Elsevier Ltd.保留所有权利。

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