Map matching algorithms try to map a series of location observations to an underlying network, to generate a single hypothesized true location or route. For some applications, including route choice modeling, such map matching is not required, and may introduce unnecessary biases into the model. This paper proposes a methodology for mapping location data to a underlying network in a probabilistic fashion, to try to avoid these potential biases. A framework for generating probabilistic matchings is presented, and the results of the algorithm are presented for a demonstration trip, to demonstrate the viability of the algorithm.
Shubhajit Das, Rubén Laplaza Solanas, Jacob Terence Blaskovits
Alcherio Martinoli, Chiara Ercolani, Lixuan Tang, Ankita Arun Humne
Devis Tuia, Benjamin Alexander Kellenberger, Thiên-Anh Claris Nguyen