The usage of mobile phones is nowadays reaching full penetration rate in most countries. Smartphones are a valuable source for urban planners to understand and investigate passengers’ behavior and recognize travel patterns more precisely. Different investigations tried to automatically extract transit mode from sensors embedded in the phones such as GPS, accelerometer, and gyroscope. This allows to reduce the resources used in travel diary surveys, which are time-consuming and costly. However, figuring out which mode of transportation individuals use is still challenging. The main limitations include GPS, and mobile sensor data collection, and data labeling errors. First, this paper aims at solving a transport mode classification problem including (still, walking, car, bus, and metro) and then as a first investigation, presents a new algorithm to compute waiting time and access time to public transport stops based on a random forest model.

Smartphone-based recognition of access trip phase to public transport stops via machine learning models / Hosseini, Seyedhassan; Gentile, Guido. - In: TRANSPORT AND TELECOMMUNICATION. - ISSN 1407-6179. - 23:4(2022), pp. 273-283. [10.2478/ttj-2022-0022]

Smartphone-based recognition of access trip phase to public transport stops via machine learning models

seyedhassan hosseini
Primo
Membro del Collaboration Group
;
guido gentile
Secondo
Membro del Collaboration Group
2022

Abstract

The usage of mobile phones is nowadays reaching full penetration rate in most countries. Smartphones are a valuable source for urban planners to understand and investigate passengers’ behavior and recognize travel patterns more precisely. Different investigations tried to automatically extract transit mode from sensors embedded in the phones such as GPS, accelerometer, and gyroscope. This allows to reduce the resources used in travel diary surveys, which are time-consuming and costly. However, figuring out which mode of transportation individuals use is still challenging. The main limitations include GPS, and mobile sensor data collection, and data labeling errors. First, this paper aims at solving a transport mode classification problem including (still, walking, car, bus, and metro) and then as a first investigation, presents a new algorithm to compute waiting time and access time to public transport stops based on a random forest model.
2022
transport mode detection,; machine learning; trip phase recognition; urban trips on public transport
01 Pubblicazione su rivista::01a Articolo in rivista
Smartphone-based recognition of access trip phase to public transport stops via machine learning models / Hosseini, Seyedhassan; Gentile, Guido. - In: TRANSPORT AND TELECOMMUNICATION. - ISSN 1407-6179. - 23:4(2022), pp. 273-283. [10.2478/ttj-2022-0022]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1665510
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