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a cross-section, U-turn, driving through round-about and traveling off-roads, are
necessary to take into account. Facts representing the special cases should be
extracted in advance from large GPS samples. To that end a more
flexible map
matching algorithm will incorporate the capability to comprehensively deal with
different cases.
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References
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