Vector tile technology is developing rapidly and has received increasing attention in recent years. Compared to the raster tile, the vector tile has shown incomparable advantages, such as flexible map styles, suitability for high-resolution screens and ease of interaction. Recent studies on vector tiles have mostly focused on improving the efficiency on the server side and have overlooked the efficiency on the client side, which affects user experience. Parallel computing provides solutions to this issue. Parallel visualization of vector tiles is a typical example of embarrassing parallelism; thus, estimating the computing times of each tile accurately and decomposing the workload into multiple computing units evenly are key to the parallel...
Within a digital map service environment, the rapid growth of Spatial Big-Data is driving new requir...
The main question explored in this thesis is how to define novel parallel random-access data structu...
This paper is on the optimization of computing resources to process geospatial image data in a cloud...
In computer science, dependence analysis determines whether or not it is safe to parallelize stateme...
Processing massive datasets which are not fitting in the main memory of computer is challenging. Thi...
Processing massive datasets which are not fitting in the main memory of computer is challenging. Thi...
With the exponential increasing demands and uses of GIS data visualization system, such as urban pla...
Over the years, the vast majority of curvature-based simplification algorithms for vector data have ...
Vector tile maps give us new and innovative ways of using maps to visualize data. The ability of the...
KEY WORDS AND PHRASES Parallel visualization, unstructured grids, large-scale geoscientific datasets...
Nowadays with the advance in managing and collecting large data, GIS is one of the applications that...
In order to display large-scale maps on the Internet, it is necessary to divide the huge spatial dat...
Today, big data is one of the most challenging topics in computer science. To give customers, deve...
We describe a parallel framework for interactive smooth rendering of massive terrains. We define a p...
The demand for parallel geocomputation based on raster data is constantly increasing with the increa...
Within a digital map service environment, the rapid growth of Spatial Big-Data is driving new requir...
The main question explored in this thesis is how to define novel parallel random-access data structu...
This paper is on the optimization of computing resources to process geospatial image data in a cloud...
In computer science, dependence analysis determines whether or not it is safe to parallelize stateme...
Processing massive datasets which are not fitting in the main memory of computer is challenging. Thi...
Processing massive datasets which are not fitting in the main memory of computer is challenging. Thi...
With the exponential increasing demands and uses of GIS data visualization system, such as urban pla...
Over the years, the vast majority of curvature-based simplification algorithms for vector data have ...
Vector tile maps give us new and innovative ways of using maps to visualize data. The ability of the...
KEY WORDS AND PHRASES Parallel visualization, unstructured grids, large-scale geoscientific datasets...
Nowadays with the advance in managing and collecting large data, GIS is one of the applications that...
In order to display large-scale maps on the Internet, it is necessary to divide the huge spatial dat...
Today, big data is one of the most challenging topics in computer science. To give customers, deve...
We describe a parallel framework for interactive smooth rendering of massive terrains. We define a p...
The demand for parallel geocomputation based on raster data is constantly increasing with the increa...
Within a digital map service environment, the rapid growth of Spatial Big-Data is driving new requir...
The main question explored in this thesis is how to define novel parallel random-access data structu...
This paper is on the optimization of computing resources to process geospatial image data in a cloud...