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Understanding transportation modes based on GPS data for web applications

Published: 29 January 2010 Publication History

Abstract

User mobility has given rise to a variety of Web applications, in which the global positioning system (GPS) plays many important roles in bridging between these applications and end users. As a kind of human behavior, transportation modes, such as walking and driving, can provide pervasive computing systems with more contextual information and enrich a user's mobility with informative knowledge. In this article, we report on an approach based on supervised learning to automatically infer users' transportation modes, including driving, walking, taking a bus and riding a bike, from raw GPS logs. Our approach consists of three parts: a change point-based segmentation method, an inference model and a graph-based post-processing algorithm. First, we propose a change point-based segmentation method to partition each GPS trajectory into separate segments of different transportation modes. Second, from each segment, we identify a set of sophisticated features, which are not affected by differing traffic conditions (e.g., a person's direction when in a car is constrained more by the road than any change in traffic conditions). Later, these features are fed to a generative inference model to classify the segments of different modes. Third, we conduct graph-based postprocessing to further improve the inference performance. This postprocessing algorithm considers both the commonsense constraints of the real world and typical user behaviors based on locations in a probabilistic manner. The advantages of our method over the related works include three aspects. (1) Our approach can effectively segment trajectories containing multiple transportation modes. (2) Our work mined the location constraints from user-generated GPS logs, while being independent of additional sensor data and map information like road networks and bus stops. (3) The model learned from the dataset of some users can be applied to infer GPS data from others. Using the GPS logs collected by 65 people over a period of 10 months, we evaluated our approach via a set of experiments. As a result, based on the change-point-based segmentation method and Decision Tree-based inference model, we achieved prediction accuracy greater than 71 percent. Further, using the graph-based post-processing algorithm, the performance attained a 4-percent enhancement.

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Published In

cover image ACM Transactions on the Web
ACM Transactions on the Web  Volume 4, Issue 1
January 2010
131 pages
ISSN:1559-1131
EISSN:1559-114X
DOI:10.1145/1658373
Issue’s Table of Contents
Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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Publication History

Published: 29 January 2010
Accepted: 01 August 2009
Revised: 01 February 2009
Received: 01 August 2008
Published in TWEB Volume 4, Issue 1

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Author Tags

  1. GPS trajectory
  2. GeoLife
  3. Spatial data mining
  4. transportation modes
  5. ubiquitous computing
  6. understanding user behavior
  7. user mobility

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  • (2024)HRNet: Differentially Private Hierarchical and Multi-Resolution Network for Human Mobility Data SynthesizationProceedings of the VLDB Endowment10.14778/3681954.368198317:11(3058-3071)Online publication date: 1-Jul-2024
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