Understanding the patterns and dynamics of spatial origin-destination flow data has been a long-standing goal of spatial scientists. This study aims at developing a new flow clustering method called flowHDBSCAN, which has the potential to be applied to various urban dynamics issues such as spatial movement analysis and intelligent transportation systems. Flows entail origin and destinations pairs, at the exclusion of the actual path in-between. The method combines density-based clustering and hierarchical clustering approaches and extends them to the context of spatial flows. Not only can it extract flow clusters from various situations including varying flow densities, lengths, directions, and hierarchies, but it also provides an effective...
Spatial flow data represent meaningful interaction activities between pairs of corresponding locatio...
This study aims at developing a data‐driven and bottom‐up spatial statistic method for identifying r...
Spatial flow data represent meaningful interaction activities between pairs of corresponding locatio...
Understanding the patterns and dynamics of spatial origin-destination flow data has been a long-stan...
Understanding the patterns and dynamics of spatial origin-destination flow data has been a long-stan...
As a typical form of geographical phenomena, spatial flow events have been widely studied in context...
One of the enduring issues of spatial origin-destination (OD) flow data analysis is the computationa...
AbstractThis paper investigates application of clustering techniques in partitioning traffic flow da...
AbstractThis paper presents a trajectory clustering method to discover spatial and temporal travel p...
This paper presents a trajectory clustering method to discover spatial and temporal travel patterns ...
Clustering methods are popular tools for pattern recognition in spatial databases. Existing clusteri...
In a number of problem domains there is an increasing interest in exploring flow data, which is defi...
Massive data from different sources are becoming available in transportation field, and spurring new...
Origin-destination (OD) movement data describe moves or trips between spatial locations by specifyin...
Spatial flow data represent meaningful interaction activities between pairs of corresponding locatio...
This study aims at developing a data‐driven and bottom‐up spatial statistic method for identifying r...
Spatial flow data represent meaningful interaction activities between pairs of corresponding locatio...
Understanding the patterns and dynamics of spatial origin-destination flow data has been a long-stan...
Understanding the patterns and dynamics of spatial origin-destination flow data has been a long-stan...
As a typical form of geographical phenomena, spatial flow events have been widely studied in context...
One of the enduring issues of spatial origin-destination (OD) flow data analysis is the computationa...
AbstractThis paper investigates application of clustering techniques in partitioning traffic flow da...
AbstractThis paper presents a trajectory clustering method to discover spatial and temporal travel p...
This paper presents a trajectory clustering method to discover spatial and temporal travel patterns ...
Clustering methods are popular tools for pattern recognition in spatial databases. Existing clusteri...
In a number of problem domains there is an increasing interest in exploring flow data, which is defi...
Massive data from different sources are becoming available in transportation field, and spurring new...
Origin-destination (OD) movement data describe moves or trips between spatial locations by specifyin...
Spatial flow data represent meaningful interaction activities between pairs of corresponding locatio...
This study aims at developing a data‐driven and bottom‐up spatial statistic method for identifying r...
Spatial flow data represent meaningful interaction activities between pairs of corresponding locatio...