In this work we investigate the use of machine learning models for the management and monitoring of sustainable mobility, with particular reference to the transport mode recognition. The specific aim is to automatize the detection of the user’s means of transport among those considered in the data collected with an App installed on the users smartphones, i.e. bicycle, bus, train, car, motorbike, pedestrian locomotion. Preliminary results show the potentiality of the analysis for the introduction of reliable advanced, machine learning based, monitoring systems for sustainable mobility. © 2020, Springer Nature Switzerland AG
Thanks to the development in recent years, the placement of miniaturized sensors such as acceleromet...
Scientific advances build on reproducible research which need publicly available benchmark datasets....
reservedThis thesis presents a comprehensive study on developing a machine learning model to predict...
In this work we investigate the use of machine learning models for the management and monitoring of ...
In this work we investigate the use of machine learning models for the management and monitoring of ...
This paper presents the results of research on the use of smartphone sensors (namely, GPS and accele...
This paper presents the results of research on the use of smartphone sensors (namely, GPS and accele...
To increase the sustainability in urban mobility, it is necessary to optimally combine public and sh...
Travel mode recognition as well as activity recognition has gained some momentum in recent years. Tr...
Travel mode recognition as well as activity recognition has gained some momentum in recent years. Tr...
MobilitApp project (http://mobilitat.upc.edu//): We offer Master/Degree thesis. The student will joi...
We have applied a machine learning approach to both implement and assess new services for the users ...
We have applied a machine learning approach to both implement and assess new services for the users ...
<span>The aim of this study is to detect transportation modes of the users by using smartphone senso...
Knowledge about human mobility patterns is the key element towards efficient mobility management. Tr...
Thanks to the development in recent years, the placement of miniaturized sensors such as acceleromet...
Scientific advances build on reproducible research which need publicly available benchmark datasets....
reservedThis thesis presents a comprehensive study on developing a machine learning model to predict...
In this work we investigate the use of machine learning models for the management and monitoring of ...
In this work we investigate the use of machine learning models for the management and monitoring of ...
This paper presents the results of research on the use of smartphone sensors (namely, GPS and accele...
This paper presents the results of research on the use of smartphone sensors (namely, GPS and accele...
To increase the sustainability in urban mobility, it is necessary to optimally combine public and sh...
Travel mode recognition as well as activity recognition has gained some momentum in recent years. Tr...
Travel mode recognition as well as activity recognition has gained some momentum in recent years. Tr...
MobilitApp project (http://mobilitat.upc.edu//): We offer Master/Degree thesis. The student will joi...
We have applied a machine learning approach to both implement and assess new services for the users ...
We have applied a machine learning approach to both implement and assess new services for the users ...
<span>The aim of this study is to detect transportation modes of the users by using smartphone senso...
Knowledge about human mobility patterns is the key element towards efficient mobility management. Tr...
Thanks to the development in recent years, the placement of miniaturized sensors such as acceleromet...
Scientific advances build on reproducible research which need publicly available benchmark datasets....
reservedThis thesis presents a comprehensive study on developing a machine learning model to predict...