2014
DOI: 10.1080/17445647.2014.935502
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An alternative method to constructing time cartograms for the visual representation of scheduled movement data

Abstract: In a cartogram, the map elements are purposely modified with respect to an attribute. A time cartogram is a type of cartogram in which the geographic-distance between locations is replaced by a time-related attribute such as travelling-time, deforming the geography accordingly. This study concentrates on centred time cartograms that visualize travellingtimes from a fixed starting location to other locations in the region. Several methods to construct time cartograms have been proposed, however these methods ar… Show more

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Cited by 22 publications
(31 citation statements)
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“…In the second step, we give the point P G0 ( x G0 , y G0 ) in the geographic map as the input to be converted into the output point P C0 ( x C0 , y C0 ) in the cartogram. By solving the MLS problem, we can fix the location of P C0 as follows : bold-italicpC0=bold-italicpG0truepnormalGM+truepnormalC bold-italicM=false∑i=1Ntruep^normalG()inormalTwitruep^normalGi1j=1Nw()jbold-italicptrue^GjTbold-italicptrue^C()j,pnormalG0=[]xnormalG00.5emynormalG0,1.6empnormalC0=[]xnormalC0ynormalC0,bold-italicptrue^G()i=pG()ibold-italicptrue‾G,1.6embold-italicptrue^C()i=pC()ibold-italicptrue‾C,pG()i=[]…”
Section: Improvement Of Moving Least Squares Transformationmentioning
confidence: 99%
“…In the second step, we give the point P G0 ( x G0 , y G0 ) in the geographic map as the input to be converted into the output point P C0 ( x C0 , y C0 ) in the cartogram. By solving the MLS problem, we can fix the location of P C0 as follows : bold-italicpC0=bold-italicpG0truepnormalGM+truepnormalC bold-italicM=false∑i=1Ntruep^normalG()inormalTwitruep^normalGi1j=1Nw()jbold-italicptrue^GjTbold-italicptrue^C()j,pnormalG0=[]xnormalG00.5emynormalG0,1.6empnormalC0=[]xnormalC0ynormalC0,bold-italicptrue^G()i=pG()ibold-italicptrue‾G,1.6embold-italicptrue^C()i=pC()ibold-italicptrue‾C,pG()i=[]…”
Section: Improvement Of Moving Least Squares Transformationmentioning
confidence: 99%
“…For linear data, octilinear cartograms simplify the geographical representation of transport networks by representing elements exclusively by horizontal or vertical lines, or 45°angles (Condeço-Melhorado, Christidis, & Dijkstra, 2015). Other interesting techniques are timespace maps, in which elements are organized in such a way that the distances between them are not proportional to their physical distance, but to the travel times between them (Axhausen, Dolci, Fröhlich, Scherer, & Carosio, 2008;Shimizu & Inoue, 2009;Spiekermann & Wegener, 1994;Ullah & Kraak, 2014). Some of them are presented in animated maps, which have the power to clearly explain the phenomenon studied (ITC -Universiteit Twente, 2011).…”
Section: Old Techniques In New Mapsmentioning
confidence: 99%
“…Isochrone maps display areas of similar travel time to a selected starting location on the map (Spiekermann & Wegener, 1994;Ullah & Kraak, 2015). By drawing lines of equal travel times (isochrones) from the selected point, it efficiently determines geo-referenced objects that are accessible within given time constraints in a given network or transport mode (Gamper, Böhlen, & Innerebner, 2012).…”
Section: Introductionmentioning
confidence: 99%