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Anthony Stefanidis

Researcher at George Mason University

Publications -  100
Citations -  3716

Anthony Stefanidis is an academic researcher from George Mason University. The author has contributed to research in topics: Social media & Geospatial analysis. The author has an hindex of 30, co-authored 99 publications receiving 3296 citations. Previous affiliations of Anthony Stefanidis include National Center for Geographic Information and Analysis & University of Maine.

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Harvesting ambient geospatial information from social media feeds

TL;DR: This paper addresses a framework to harvest ambient geospatial information, and resulting hybrid capabilities to analyze it to support situational awareness as it relates to human activities.
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#Earthquake: Twitter as a Distributed Sensor System

TL;DR: The experiments support the notion that people act as sensors to give us comparable results in a timely manner, and can complement other sources of data to enhance the authors' situational awareness and improve their understanding and response to such events.
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Self-organised clustering for road extraction in classified imagery

TL;DR: This work proposes an approach of elongated region-based analysis for 2D road extraction from high-resolution imagery, which is suitable for MSI, and is insensitive to conventional edge definition, designed in consideration of the emerging trend towards high- resolution multispectral sensors.
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Crowdsourcing urban form and function

TL;DR: A new typology for characterizing the role of crowdsourcing in the study of urban morphology is provided by synthesizing recent advancements in the analysis of open-source data, which shows how social media, trajectory, and traffic data can be analyzed to capture the evolving nature of a city’s form and function.
Proceedings ArticleDOI

Spatiotemporal data mining in the era of big spatial data: algorithms and applications

TL;DR: This paper reviews major spatial data mining algorithms by closely looking at the computational and I/O requirements and allude to few applications dealing with big spatial data.