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Journal ArticleDOI

Trajectory Data Mining: An Overview

Yu Zheng
- 12 May 2015 - 
- Vol. 6, Iss: 3, pp 29
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TLDR
A systematic survey on the major research into trajectory data mining, providing a panorama of the field as well as the scope of its research topics, and introduces the methods that transform trajectories into other data formats, such as graphs, matrices, and tensors.
Abstract
The advances in location-acquisition and mobile computing techniques have generated massive spatial trajectory data, which represent the mobility of a diversity of moving objects, such as people, vehicles, and animals. Many techniques have been proposed for processing, managing, and mining trajectory data in the past decade, fostering a broad range of applications. In this article, we conduct a systematic survey on the major research into trajectory data mining, providing a panorama of the field as well as the scope of its research topics. Following a road map from the derivation of trajectory data, to trajectory data preprocessing, to trajectory data management, and to a variety of mining tasks (such as trajectory pattern mining, outlier detection, and trajectory classification), the survey explores the connections, correlations, and differences among these existing techniques. This survey also introduces the methods that transform trajectories into other data formats, such as graphs, matrices, and tensors, to which more data mining and machine learning techniques can be applied. Finally, some public trajectory datasets are presented. This survey can help shape the field of trajectory data mining, providing a quick understanding of this field to the community.

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Activity-Based Human Mobility Patterns Inferred from Mobile Phone Data: A Case Study of Singapore

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References
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Journal ArticleDOI

A Statistical Analysis of Mathematical Measures for Linear Simplification

TL;DR: This study presents a method for the evaluation of simplification algorithms, using principal components analysis, correlation matrices, and cartographic judgment to compare thirty-one unsimplified naturally-occurring lines with two simplifications of each.
Proceedings ArticleDOI

On Discovery of Traveling Companions from Streaming Trajectories

TL;DR: A new data structure termed traveling buddy is designed to facilitate scalable and flexible companion discovery on trajectory stream that is an order of magnitude faster than existing methods and outperforms other competitors with higher precision and recall in companion discovery.
Proceedings ArticleDOI

Efficient detection of motion patterns in spatio-temporal data sets

TL;DR: By the use of techniques from computational geometry, including approximation algorithms, this work improves the running time bounds of existing algorithms to detect spatio-temporal patterns of moving point objects, namely flock, leadership, convergence, and encounter.
Journal ArticleDOI

Continuous Clustering of Moving Objects

TL;DR: An extensive experimental study shows that the new scheme performs significantly faster than traditional ones that frequently rebuild clusters and is effective in preserving the quality of moving-object clusters.
Book ChapterDOI

Incremental clustering for trajectories

TL;DR: Wang et al. as discussed by the authors proposed an incremental clustering framework for trajectories, which contains two parts: online micro-cluster maintenance and offline macro-clusters creation, where each trajectory is simplified into a set of directed line segments in order to find clusters of trajectory subparts.
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