Abstract—Adjacency and neighbor structures play an essential role in many spatial analytical tasks. The computation of adjacenecy structures is non-trivial and can form a significant processing bottleneck as the total number of observations increases. We quantify the performance of synthetic and real world binary, first-order, adjacency algorithms and offer a solution that leverages Python’s high performance containers. A comparison of this algorithm with a traditional spatial decomposition shows that the former outperforms the latter as a function of the geometric complexity, i.e the number of vertices and edges. Index Terms—adjacency, spatial analysis, spatial weight
We present an algorithm for overlaying polygonal data with regular grids and calculating the percent...
This manuscript presents an overview of my work in the field of geospatial machine learning, a rapid...
textabstractGeospatial joins are a core building block of connected mobility applications. An espec...
It is fact universally acknowledged that discrete computing systems are ill-equipped to process vect...
How do you analyze 1 trillion rows of geospatial point data? We recently solved this problem using s...
Spatial Aggregation (SA) is a computational approach to the analysis of large spatial data sets. It ...
Abstract. The polygon amalgamation operation computes the bound-ary of the union of a set of polygon...
The polygon amalgamation operation computes the boundary of the union of a set of polygons. This is ...
Computer processing can drastically improve the quality of an image and the reliability and accuracy...
Geographic information science and systems face challenges related to understanding the instinctive ...
The naïve algorithm for generating nearest-neighbour models determines the distance between every pa...
Spatial-temporal modelling of environmental systems such as agriculture, forestry, and water resourc...
With continued advances in Geographic Information Systems and related computationaltechnologies, sta...
In the big data era, an enormous amount of spatial and spatiotemporal data are generated every day. ...
International audienceA geometrical pattern is a set of points with all pairwise distances (or, more...
We present an algorithm for overlaying polygonal data with regular grids and calculating the percent...
This manuscript presents an overview of my work in the field of geospatial machine learning, a rapid...
textabstractGeospatial joins are a core building block of connected mobility applications. An espec...
It is fact universally acknowledged that discrete computing systems are ill-equipped to process vect...
How do you analyze 1 trillion rows of geospatial point data? We recently solved this problem using s...
Spatial Aggregation (SA) is a computational approach to the analysis of large spatial data sets. It ...
Abstract. The polygon amalgamation operation computes the bound-ary of the union of a set of polygon...
The polygon amalgamation operation computes the boundary of the union of a set of polygons. This is ...
Computer processing can drastically improve the quality of an image and the reliability and accuracy...
Geographic information science and systems face challenges related to understanding the instinctive ...
The naïve algorithm for generating nearest-neighbour models determines the distance between every pa...
Spatial-temporal modelling of environmental systems such as agriculture, forestry, and water resourc...
With continued advances in Geographic Information Systems and related computationaltechnologies, sta...
In the big data era, an enormous amount of spatial and spatiotemporal data are generated every day. ...
International audienceA geometrical pattern is a set of points with all pairwise distances (or, more...
We present an algorithm for overlaying polygonal data with regular grids and calculating the percent...
This manuscript presents an overview of my work in the field of geospatial machine learning, a rapid...
textabstractGeospatial joins are a core building block of connected mobility applications. An espec...