Many types of human mobility data, such as flows of taxicabs, card swiping data of subways, bike trip data and Call Details Records (CDR), can be modeled by a Spatio-Temporal Graph (STG). STG is a directed graph in which vertices and edges are associated with spatio-temporal properties (e.g. the traffic flow on a road and the geospatial location of an intersection). In this paper, we instantly detect interesting phenomena, entitled black holes and volcanos, from an STG. Specifically, a black hole is a subgraph (of an STG) that has the overall inflow greater than the overall outflow by a threshold, while a volcano is a subgraph with the overall outflow greater than the overall inflow by a threshold (detecting volcanos from an STG is proved t...
Detecting events using social media data is important for timely emergency response and urban monito...
Understanding human mobility patterns is an essence for geography and geographical information scien...
Hotspots are regions where the number of spatial objects is obviously high within the time intervals...
The increasing volume of urban human mobility data arises unprecedented opportunities to monitor and...
Urban anomalies such as the abnormal flow of crowds and traffic accidents could result in loss of li...
The study focuses on mapping spatiotemporal patterns and detecting the potential drivers of traffic ...
As we move into the big data era, data grows not just in size, but also in complexity, containing a ...
(a) Main visualization on anomalous regions (b) Zoomed-in view with anomaly bars Figure 1: An overvi...
In this paper, we explore spatio-temporal clusters using massive floating car data from a complex ne...
The increasing availability of large-scale trajectory data provides us great opportunity to explore ...
With the availability of massive trajectory data, it is highly valuable to reveal their activity inf...
The accessibility of large-scale Spatio-Temporal GPS data provides us information for analyzing the ...
2016-02-18For the first time, real‐time high‐fidelity spatiotemporal data on the transportation netw...
Urban anomalies may result in loss of life or property if not handled properly. Automatically alerti...
Vehicular traffic congestion is becoming a major problem in metropolitan cities throughout the world...
Detecting events using social media data is important for timely emergency response and urban monito...
Understanding human mobility patterns is an essence for geography and geographical information scien...
Hotspots are regions where the number of spatial objects is obviously high within the time intervals...
The increasing volume of urban human mobility data arises unprecedented opportunities to monitor and...
Urban anomalies such as the abnormal flow of crowds and traffic accidents could result in loss of li...
The study focuses on mapping spatiotemporal patterns and detecting the potential drivers of traffic ...
As we move into the big data era, data grows not just in size, but also in complexity, containing a ...
(a) Main visualization on anomalous regions (b) Zoomed-in view with anomaly bars Figure 1: An overvi...
In this paper, we explore spatio-temporal clusters using massive floating car data from a complex ne...
The increasing availability of large-scale trajectory data provides us great opportunity to explore ...
With the availability of massive trajectory data, it is highly valuable to reveal their activity inf...
The accessibility of large-scale Spatio-Temporal GPS data provides us information for analyzing the ...
2016-02-18For the first time, real‐time high‐fidelity spatiotemporal data on the transportation netw...
Urban anomalies may result in loss of life or property if not handled properly. Automatically alerti...
Vehicular traffic congestion is becoming a major problem in metropolitan cities throughout the world...
Detecting events using social media data is important for timely emergency response and urban monito...
Understanding human mobility patterns is an essence for geography and geographical information scien...
Hotspots are regions where the number of spatial objects is obviously high within the time intervals...