Constructing digitial elevation model(DEM) from dense LiDAR points becomes increasingly important. Natural Neighbor Inter-polation (NNI) is a popular approach to DEM construction from point datasets but is computationally intensive. In this study, we present a set of General Purpose computing Graphics Processing Unit(GPGPU) based algorithms that can significant speed up the process. Evaluating three real world LiDAR datasets each contains 6~7 million points shows that our CUDA based implementation on a NVIDIA GTX 480 GPU card is 1-2 orders faster than the current state-of-the-art
2.5D terrain model generation from a data stream provides high quality data, which can be used for a...
Airborne Light Detection and Ranging (LiDAR) is widely used in digital elevation model (DEM) generat...
The goal of this thesis, is to investigate the possible benefits of using general-purpose computing ...
The proliferation of lidar technology in remote sensing has resulted in extremely large, high resolu...
The paper presents an innovative data classification approach based on parallel computing performed ...
LiDAR products are provided at fine spatial resolutions and the data volume can be huge even for a s...
Summary. Given a set S of points in R 3 sampled from an elevation function H: R 2 → R, we present a ...
Airborne Light Detection and Ranging (LiDAR) topographic data provide highly accurate digital terrai...
Nowadays, heterogeneous CPU-GPU systems have become ubiquitous, but current parallel spatial interpo...
The Light detection and ranging (LiDAR) sensor is well known for its application in the field of sur...
This article is focused on optimization of the processing of large volumes of data sets obtained by ...
In order to find a solution for accurate, topographic data-demanding applications, such as catchment...
This article explores the utilization of the processing power of GPUs using CUDA computation for rea...
Nearest neighbor analysis is one of the classic methods to find out the tendency of the observed poi...
The problem researched in this thesis is implementing GPU acceleration into LiDAR point cloud proces...
2.5D terrain model generation from a data stream provides high quality data, which can be used for a...
Airborne Light Detection and Ranging (LiDAR) is widely used in digital elevation model (DEM) generat...
The goal of this thesis, is to investigate the possible benefits of using general-purpose computing ...
The proliferation of lidar technology in remote sensing has resulted in extremely large, high resolu...
The paper presents an innovative data classification approach based on parallel computing performed ...
LiDAR products are provided at fine spatial resolutions and the data volume can be huge even for a s...
Summary. Given a set S of points in R 3 sampled from an elevation function H: R 2 → R, we present a ...
Airborne Light Detection and Ranging (LiDAR) topographic data provide highly accurate digital terrai...
Nowadays, heterogeneous CPU-GPU systems have become ubiquitous, but current parallel spatial interpo...
The Light detection and ranging (LiDAR) sensor is well known for its application in the field of sur...
This article is focused on optimization of the processing of large volumes of data sets obtained by ...
In order to find a solution for accurate, topographic data-demanding applications, such as catchment...
This article explores the utilization of the processing power of GPUs using CUDA computation for rea...
Nearest neighbor analysis is one of the classic methods to find out the tendency of the observed poi...
The problem researched in this thesis is implementing GPU acceleration into LiDAR point cloud proces...
2.5D terrain model generation from a data stream provides high quality data, which can be used for a...
Airborne Light Detection and Ranging (LiDAR) is widely used in digital elevation model (DEM) generat...
The goal of this thesis, is to investigate the possible benefits of using general-purpose computing ...