This paper proposes a probabilistic method that infers the transport modes and the physical path of trips from smartphone data that were recorded during travels. This method synthesizes multiple kinds of data from smartphone sensors which provide relevant location or transport mode information: GPS, Bluetooth, and Accelerometer. The method is based on a smartphone measurement model that calculates the likelihood of observing the smartphone data in the multimodal transport network. The output of this probabilistic method is a set of candidate true paths, and the probability of each path being the true one. The transport mode used on each arc is also inferred. Numerical experiments include map visualizations of some example trips, and an anal...
In this paper, we compare different algorithms for the recognition of transportation modes based on ...
Abstract — Understanding the mobility of a traveller from mobile sensor data is an important area of...
<span>The aim of this study is to detect transportation modes of the users by using smartphone senso...
transp-or.epfl.ch This paper proposes a probabilistic method that infers the trans-port modes and th...
Smartphones have the capability of recording various kinds of data from built-in sensors such as GPS...
Smartphones have the capability of recording various kinds of data from built-in sensors such as GPS...
In this thesis, we develop methods for modeling route choice behavior using smartphone data. The dev...
International audienceWe designed a system to infer the multimodal itineraries traveled by a user fr...
International audienceWe designed a system to infer multimodal itineraries traveled by a user from a...
We propose and compare combinations of several methods for classifying transportation activity data ...
As transportation engineering and planning evolve from “data poor” to “data rich” practices, methods...
International audienceWe designed a system to infer multimodal itineraries traveled by a user from a...
Understanding which transportation modes people use is critical for smart cities and planners to bet...
Transportation modes identification is an important transportation research problem with wide applic...
Personal trips in a modern urban society typically involve multiple travel modes. Recognizing a trav...
In this paper, we compare different algorithms for the recognition of transportation modes based on ...
Abstract — Understanding the mobility of a traveller from mobile sensor data is an important area of...
<span>The aim of this study is to detect transportation modes of the users by using smartphone senso...
transp-or.epfl.ch This paper proposes a probabilistic method that infers the trans-port modes and th...
Smartphones have the capability of recording various kinds of data from built-in sensors such as GPS...
Smartphones have the capability of recording various kinds of data from built-in sensors such as GPS...
In this thesis, we develop methods for modeling route choice behavior using smartphone data. The dev...
International audienceWe designed a system to infer the multimodal itineraries traveled by a user fr...
International audienceWe designed a system to infer multimodal itineraries traveled by a user from a...
We propose and compare combinations of several methods for classifying transportation activity data ...
As transportation engineering and planning evolve from “data poor” to “data rich” practices, methods...
International audienceWe designed a system to infer multimodal itineraries traveled by a user from a...
Understanding which transportation modes people use is critical for smart cities and planners to bet...
Transportation modes identification is an important transportation research problem with wide applic...
Personal trips in a modern urban society typically involve multiple travel modes. Recognizing a trav...
In this paper, we compare different algorithms for the recognition of transportation modes based on ...
Abstract — Understanding the mobility of a traveller from mobile sensor data is an important area of...
<span>The aim of this study is to detect transportation modes of the users by using smartphone senso...