The tendency towards using activity-based models to predict trip demand has increased dramatically over recent years, but these models have suffered insufficient data for calibration. This paper discusses ways to process the cellphone spatio-temporal data in a manner that makes it comprehensible for traffic interpretations and proposes methods on how to infer urban mobility and activity patterns from the aforementioned data. Movements of each subscriber is described by a sequence of stays and trips and each stay is labeled by an activity. The type of activities are estimated using features such as land use, duration of stay, frequency of visit, arrival time to that activity and its distance from home. Finally, the chains of trips are identi...
This project develops machine learning algorithms and methods for processing of cell phone location ...
Travel behaviour analysis has been an essential topic since 1970s. Research shows that there is a st...
Thanks to their widespread usage, mobile devices have become one of the main sensors of human behavi...
The tendency towards using activity-based models to predict trip demand has increased dramatically o...
Understanding individual daily activity patterns is essential for travel demand management and urban...
The mobility patterns of the population are the basis of most analyses in the transportation field. ...
This paper proposes a framework to extract dynamic trip flows and travel demand patterns from large-...
International audienceData mining techniques can extract useful activity and travel information from...
This chapter explores the potential of mobile phone data in reading urban practices and rhythms of u...
Abstract—Understanding the dynamics of the individuals’ daily mobility patterns is very important in...
Transportation has been one of the defining challenges of our age. Transportation decision makers ar...
There has been growing interest in exploiting cellular network data for transportation planning purp...
This work investigates whether the user-generated data from multiple sources, such as smart cards an...
International audienceWith the rapid growth of cell phone networks during the last decades, call det...
Understanding the dynamics of the individuals' daily mobility patterns is very important in a w...
This project develops machine learning algorithms and methods for processing of cell phone location ...
Travel behaviour analysis has been an essential topic since 1970s. Research shows that there is a st...
Thanks to their widespread usage, mobile devices have become one of the main sensors of human behavi...
The tendency towards using activity-based models to predict trip demand has increased dramatically o...
Understanding individual daily activity patterns is essential for travel demand management and urban...
The mobility patterns of the population are the basis of most analyses in the transportation field. ...
This paper proposes a framework to extract dynamic trip flows and travel demand patterns from large-...
International audienceData mining techniques can extract useful activity and travel information from...
This chapter explores the potential of mobile phone data in reading urban practices and rhythms of u...
Abstract—Understanding the dynamics of the individuals’ daily mobility patterns is very important in...
Transportation has been one of the defining challenges of our age. Transportation decision makers ar...
There has been growing interest in exploiting cellular network data for transportation planning purp...
This work investigates whether the user-generated data from multiple sources, such as smart cards an...
International audienceWith the rapid growth of cell phone networks during the last decades, call det...
Understanding the dynamics of the individuals' daily mobility patterns is very important in a w...
This project develops machine learning algorithms and methods for processing of cell phone location ...
Travel behaviour analysis has been an essential topic since 1970s. Research shows that there is a st...
Thanks to their widespread usage, mobile devices have become one of the main sensors of human behavi...