In computer science, dependence analysis determines whether or not it is safe to parallelize statements in programs. In dealing with the data-intensive and computationally intensive spatial operations in processing massive volumes of geometric features, this dependence can be well utilized for exploiting the parallelism. In this paper, we propose a graph-based divide and conquer method for parallelizing spatial operations (GDCMPSO) on vector data. It can represent spatial data dependences in spatial operations through representing the vector features as graph vertices, and their computational dependences as graph edges. By this way, spatial operations can be parallelized in three steps: partitioning the graph into graph components with inte...
In this paper, we present how 3D split and merge segmentation using topological and geometrical stru...
Processing massive datasets which are not fitting in the main memory of computer is challenging. Thi...
abstract: Nearly 25 years ago, parallel computing techniques were first applied to vector spatial an...
In computer science, dependence analysis determines whether or not it is safe to parallelize stateme...
Vector tile technology is developing rapidly and has received increasing attention in recent years. ...
Given a problem that can be represented as a graph with nodes and edges, how can we efficiently expl...
Today, a large amount of spatial data is generated from a variety of sources, such as mobile devices...
This paper describes several parallel algorithms that solve geometric problems. The algorithms are b...
Most parallel processing methods developed for geographic analyses bind the design of domain decompo...
Calculations can naturally be described as graphs in which vertices represent computation and edges ...
Parallel computing provides a promising solution to accelerate complicated spatial data processing, ...
International audienceIn this paper, we show that various concepts and tools developed in the 90's i...
AbstractComputers with multiple processor cores using shared memory are now ubiquitous. In this pape...
Processing massive datasets which are not fitting in the main memory of computer is challenging. Thi...
ii Vector Spatial data types such as lines, polygons or regions etc usually comprises of hundreds of...
In this paper, we present how 3D split and merge segmentation using topological and geometrical stru...
Processing massive datasets which are not fitting in the main memory of computer is challenging. Thi...
abstract: Nearly 25 years ago, parallel computing techniques were first applied to vector spatial an...
In computer science, dependence analysis determines whether or not it is safe to parallelize stateme...
Vector tile technology is developing rapidly and has received increasing attention in recent years. ...
Given a problem that can be represented as a graph with nodes and edges, how can we efficiently expl...
Today, a large amount of spatial data is generated from a variety of sources, such as mobile devices...
This paper describes several parallel algorithms that solve geometric problems. The algorithms are b...
Most parallel processing methods developed for geographic analyses bind the design of domain decompo...
Calculations can naturally be described as graphs in which vertices represent computation and edges ...
Parallel computing provides a promising solution to accelerate complicated spatial data processing, ...
International audienceIn this paper, we show that various concepts and tools developed in the 90's i...
AbstractComputers with multiple processor cores using shared memory are now ubiquitous. In this pape...
Processing massive datasets which are not fitting in the main memory of computer is challenging. Thi...
ii Vector Spatial data types such as lines, polygons or regions etc usually comprises of hundreds of...
In this paper, we present how 3D split and merge segmentation using topological and geometrical stru...
Processing massive datasets which are not fitting in the main memory of computer is challenging. Thi...
abstract: Nearly 25 years ago, parallel computing techniques were first applied to vector spatial an...