Both recognizing human behavior and understanding a user’s mobility from sensor data are critical issues in ubiquitous computing systems. As a kind of user behavior, the transportation modes, such as walking, driving, etc., that a user takes, can enrich the user’s mobility with informative knowledge and provide pervasive computing systems with more context information. In this paper, we propose an approach based on supervised learning to infer people’s motion modes from their GPS logs. The contribution of this work lies in the following two aspects. On one hand, we identify a set of sophisticated features, which are more robust to traffic condition than those other researchers ever used. On the other hand, we propose a graph-based post-proc...
Learning knowledge from users GPS traces can provide rich context information to be applied in sever...
In this paper, we focus on simultaneous inference of transportation modes and human activities in da...
This work investigates whether the user-generated data from multiple sources, such as smart cards an...
Both recognizing human behavior and understanding a user’s mobility from sensor data are critical is...
GPS tracking data are widely used to understand human travel behavior and to evaluate the impact of ...
Geographic information has spawned many novel Web applications where global positioning system (GPS)...
Human mobility is important for understanding the evolution of size and structure of urban areas, th...
Abstract — Understanding the mobility of a traveller from mobile sensor data is an important area of...
AbstractThis paper introduces a hierarchical Markov model that can learn and infer a user's daily mo...
The mining of human mobility can be exploited to support the design of traffic planning, route recom...
This paper introduces a hierarchical Markov model that can learn and infer a user’s daily movements ...
Understanding travel behaviour is important for studying tourist activity, the quality of life, a st...
The fast development in telecommunication is producing a huge amount of data related to how people m...
The increased availability of GPS-enabled devices makes possible to collect location data for mining...
Accurate modeling of the movement of mobile users is important for the design and operation of mobil...
Learning knowledge from users GPS traces can provide rich context information to be applied in sever...
In this paper, we focus on simultaneous inference of transportation modes and human activities in da...
This work investigates whether the user-generated data from multiple sources, such as smart cards an...
Both recognizing human behavior and understanding a user’s mobility from sensor data are critical is...
GPS tracking data are widely used to understand human travel behavior and to evaluate the impact of ...
Geographic information has spawned many novel Web applications where global positioning system (GPS)...
Human mobility is important for understanding the evolution of size and structure of urban areas, th...
Abstract — Understanding the mobility of a traveller from mobile sensor data is an important area of...
AbstractThis paper introduces a hierarchical Markov model that can learn and infer a user's daily mo...
The mining of human mobility can be exploited to support the design of traffic planning, route recom...
This paper introduces a hierarchical Markov model that can learn and infer a user’s daily movements ...
Understanding travel behaviour is important for studying tourist activity, the quality of life, a st...
The fast development in telecommunication is producing a huge amount of data related to how people m...
The increased availability of GPS-enabled devices makes possible to collect location data for mining...
Accurate modeling of the movement of mobile users is important for the design and operation of mobil...
Learning knowledge from users GPS traces can provide rich context information to be applied in sever...
In this paper, we focus on simultaneous inference of transportation modes and human activities in da...
This work investigates whether the user-generated data from multiple sources, such as smart cards an...