Literature DB >> 23462533

Trajectory data analyses for pedestrian space-time activity study.

Feng Qi1, Fei Du.   

Abstract

It is well recognized that human movement in the spatial and temporal dimensions has direct influence on disease transmission(1-3). An infectious disease typically spreads via contact between infected and susceptible individuals in their overlapped activity spaces. Therefore, daily mobility-activity information can be used as an indicator to measure exposures to risk factors of infection. However, a major difficulty and thus the reason for paucity of studies of infectious disease transmission at the micro scale arise from the lack of detailed individual mobility data. Previously in transportation and tourism research detailed space-time activity data often relied on the time-space diary technique, which requires subjects to actively record their activities in time and space. This is highly demanding for the participants and collaboration from the participants greatly affects the quality of data(4). Modern technologies such as GPS and mobile communications have made possible the automatic collection of trajectory data. The data collected, however, is not ideal for modeling human space-time activities, limited by the accuracies of existing devices. There is also no readily available tool for efficient processing of the data for human behavior study. We present here a suite of methods and an integrated ArcGIS desktop-based visual interface for the pre-processing and spatiotemporal analyses of trajectory data. We provide examples of how such processing may be used to model human space-time activities, especially with error-rich pedestrian trajectory data, that could be useful in public health studies such as infectious disease transmission modeling. The procedure presented includes pre-processing, trajectory segmentation, activity space characterization, density estimation and visualization, and a few other exploratory analysis methods. Pre-processing is the cleaning of noisy raw trajectory data. We introduce an interactive visual pre-processing interface as well as an automatic module. Trajectory segmentation(5) involves the identification of indoor and outdoor parts from pre-processed space-time tracks. Again, both interactive visual segmentation and automatic segmentation are supported. Segmented space-time tracks are then analyzed to derive characteristics of one's activity space such as activity radius etc. Density estimation and visualization are used to examine large amount of trajectory data to model hot spots and interactions. We demonstrate both density surface mapping(6) and density volume rendering(7). We also include a couple of other exploratory data analyses (EDA) and visualizations tools, such as Google Earth animation support and connection analysis. The suite of analytical as well as visual methods presented in this paper may be applied to any trajectory data for space-time activity studies.

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Year:  2013        PMID: 23462533      PMCID: PMC3605616          DOI: 10.3791/50130

Source DB:  PubMed          Journal:  J Vis Exp        ISSN: 1940-087X            Impact factor:   1.355


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Authors:  Cécile Viboud; Ottar N Bjørnstad; David L Smith; Lone Simonsen; Mark A Miller; Bryan T Grenfell
Journal:  Science       Date:  2006-03-30       Impact factor: 47.728

2.  Sequential kernel density approximation and its application to real-time visual tracking.

Authors:  Bohyung Han; Dorin Comaniciu; Ying Zhu; Larry S Davis
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2008-07       Impact factor: 6.226

3.  The role of human movement in the transmission of vector-borne pathogens.

Authors:  Steven T Stoddard; Amy C Morrison; Gonzalo M Vazquez-Prokopec; Valerie Paz Soldan; Tadeusz J Kochel; Uriel Kitron; John P Elder; Thomas W Scott
Journal:  PLoS Negl Trop Dis       Date:  2009-07-21

Review 4.  The challenge of emerging and re-emerging infectious diseases.

Authors:  David M Morens; Gregory K Folkers; Anthony S Fauci
Journal:  Nature       Date:  2004-07-08       Impact factor: 49.962

  4 in total
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1.  Defining Neighbourhoods as a Measure of Exposure to the Food Environment.

Authors:  Anders K Lyseen; Henning S Hansen; Henrik Harder; Anders S Jensen; Bent E Mikkelsen
Journal:  Int J Environ Res Public Health       Date:  2015-07-21       Impact factor: 3.390

2.  Tracking and visualization of space-time activities for a micro-scale flu transmission study.

Authors:  Feng Qi; Fei Du
Journal:  Int J Health Geogr       Date:  2013-02-07       Impact factor: 3.918

  2 in total

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