TY - JOUR
T1 - Erforschung von Bewegungsbeschreibungen durch geovisuelle Analytik
AU - Pezanowski, Scott
AU - Mitra, Prasenjit
AU - MacEachren, Alan M.
N1 - Funding Information:
We would like to thank the Information Technology group in the College of Information Sciences and Technology at The Pennsylvania State University for providing computing resources to host GeoMovement. Specifically, Adam McMillen, a Systems Administrator in the group, provided his expertise in establishing a virtual server and deploying GeoMovement to it.
Publisher Copyright:
© 2022, Deutsche Gesellschaft für Kartographie e.V.
PY - 2022/3
Y1 - 2022/3
N2 - Sensemaking using automatically extracted information from text is a challenging problem. In this paper, we address a specific type of information extraction, namely extracting information related to descriptions of movement. Aggregating and understanding information related to descriptions of movement and lack of movement specified in text can lead to an improved understanding and sensemaking of movement phenomena of various types, e.g., migration of people and animals, impediments to travel due to COVID-19, etc. We present GeoMovement, a system that is based on combining machine learning and rule-based extraction of movement-related information with state-of-the-art visualization techniques. Along with the depiction of movement, our tool can extract and present a lack of movement. Very little prior work exists on automatically extracting descriptions of movement, especially negation and movement. Apart from addressing these, GeoMovement also provides a novel integrated framework for combining these extraction modules with visualization. We include two systematic case studies of GeoMovement that show how humans can derive meaningful geographic movement information. GeoMovement can complement precise movement data, e.g., obtained using sensors, or be used by itself when precise data is unavailable.
AB - Sensemaking using automatically extracted information from text is a challenging problem. In this paper, we address a specific type of information extraction, namely extracting information related to descriptions of movement. Aggregating and understanding information related to descriptions of movement and lack of movement specified in text can lead to an improved understanding and sensemaking of movement phenomena of various types, e.g., migration of people and animals, impediments to travel due to COVID-19, etc. We present GeoMovement, a system that is based on combining machine learning and rule-based extraction of movement-related information with state-of-the-art visualization techniques. Along with the depiction of movement, our tool can extract and present a lack of movement. Very little prior work exists on automatically extracting descriptions of movement, especially negation and movement. Apart from addressing these, GeoMovement also provides a novel integrated framework for combining these extraction modules with visualization. We include two systematic case studies of GeoMovement that show how humans can derive meaningful geographic movement information. GeoMovement can complement precise movement data, e.g., obtained using sensors, or be used by itself when precise data is unavailable.
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U2 - 10.1007/s42489-022-00098-3
DO - 10.1007/s42489-022-00098-3
M3 - Article
C2 - 35229072
AN - SCOPUS:85125063341
SN - 2524-4957
VL - 72
SP - 5
EP - 27
JO - KN - Journal of Cartography and Geographic Information
JF - KN - Journal of Cartography and Geographic Information
IS - 1
ER -