TY - GEN
T1 - Understanding taxi driving behaviors from movement data
AU - Ding, Linfang
AU - Fan, Hongchao
AU - Meng, Liqiu
N1 - Publisher Copyright:
© Springer International Publishing Switzerland 2015.
PY - 2015
Y1 - 2015
N2 - Understanding taxi mobility has significant social and economic impacts on the urban areas. The goal of this paper is to visualize and analyze the spatiotemporal driving patterns for two income-level groups, i.e. high-income and lowincome taxis, when they are not occupied. Specifically, we differentiate the cruising and stationary states of non-occupied taxis and focus on the analysis of the mobility patterns of these two states. This work introduces an approach to detect the stationary spots from a large amount of non-occupied trajectory data. The visualization and analysis procedure comprises of mainly the visual analysis of the cruising trips and the stationary spots by integrating data mining and visualization techniques. Temporal patterns of the cruising trips and stationary spots of the two groups are compared based on the line charts and time graphs. A density-based spatial clustering approach is applied to cluster and aggregate the stationary spots. A variety of visualization methods, e.g. map, pie charts, and space-time cube views, are used to show the spatial and temporal distribution of the cruising centers and the clustered and aggregated stationary spots. The floating car data collected from about 2000 taxis in 47 days in Shanghai, China, is taken as the test dataset. The visual analytic results demonstrate that there are distinctive cruising and stationary driving behaviors between the high-income and low-income taxi groups.
AB - Understanding taxi mobility has significant social and economic impacts on the urban areas. The goal of this paper is to visualize and analyze the spatiotemporal driving patterns for two income-level groups, i.e. high-income and lowincome taxis, when they are not occupied. Specifically, we differentiate the cruising and stationary states of non-occupied taxis and focus on the analysis of the mobility patterns of these two states. This work introduces an approach to detect the stationary spots from a large amount of non-occupied trajectory data. The visualization and analysis procedure comprises of mainly the visual analysis of the cruising trips and the stationary spots by integrating data mining and visualization techniques. Temporal patterns of the cruising trips and stationary spots of the two groups are compared based on the line charts and time graphs. A density-based spatial clustering approach is applied to cluster and aggregate the stationary spots. A variety of visualization methods, e.g. map, pie charts, and space-time cube views, are used to show the spatial and temporal distribution of the cruising centers and the clustered and aggregated stationary spots. The floating car data collected from about 2000 taxis in 47 days in Shanghai, China, is taken as the test dataset. The visual analytic results demonstrate that there are distinctive cruising and stationary driving behaviors between the high-income and low-income taxi groups.
KW - Mobility pattern
KW - Movement data
KW - Taxi driving behaviour
UR - http://www.scopus.com/inward/record.url?scp=84945947522&partnerID=8YFLogxK
U2 - 10.1007/978-3-319-16787-9_13
DO - 10.1007/978-3-319-16787-9_13
M3 - Conference contribution
AN - SCOPUS:84945947522
SN - 9783319167862
T3 - Lecture Notes in Geoinformation and Cartography
SP - 219
EP - 234
BT - AGILE 2015 - Geographic Information Science as an Enabler of Smarter Cities and Communities
A2 - Santos, Maribel Yasmina
A2 - Bacao, Fernando
A2 - Painho, Marco
PB - Kluwer Academic Publishers
T2 - 18th AGILE International Conference on Geographic Information Science, AGILE 2015
Y2 - 9 June 2015 through 12 June 2015
ER -