Different algorithms have been raised for viewshed analysis and measures were taken to get the compromise between performance and accuracy. The most accurate and standard algorithm is still the basic interpolation method, though its time cost is high. However, the development of Graphic Processing Unit (GPU) enables us to acquire high performance with normal PC, especially when the Compute Unified Device Architecture (CUDA) is put forward by NVIDIA for general purpose computing. In this paper, we will analyze the feasibility to map the basic interpolation method into GPU application and give our approach to achieve this goal. Further, we will introduce two critical measures in this approach: one is how to assign the data into different memo...
This paper presents a framework for GPU-accelerated N-view triangulation in multi-view reconstructio...
This research study is based on the growing interest towards graphical processing unit usability for...
We present an efficient model to analyze and improve the performance of general-purpose computation ...
This master's thesis deals with acceleration of pixel interpolation methods using the GPU and NVIDIA...
The research domain of Multimedia Content Analysis (MMCA) considers all aspects of the automated ext...
The purpose of this thesis is to present the computational performances of graphical processing unit...
Abstract—In this paper, we construe key factors in design and evaluation of image processing algorit...
This thesis deals with the implementation of a multi-view stereo algorithm in a massively parallel w...
This thesis deals with the implementation of a multi-view stereo algorithm in a massively parallel w...
Over the past few years, we have seen an exponential performance boost of the graphics processing un...
This paper compares the speed performance of a set of classic image algorithms for evaluating textur...
Graphics Processing Units (GPUs) are microprocessors attached to graphics cards, which are dedicated...
Abstract—Many general-purpose applications exploit Graphics Processing Units (GPUs) by executing a s...
The objective of this thesis is to optimize the Seam Carving method in CUDA (Compute Unified Device ...
We first present two GPU implementations of the standard Inverse Distance Weighting (IDW) interpolat...
This paper presents a framework for GPU-accelerated N-view triangulation in multi-view reconstructio...
This research study is based on the growing interest towards graphical processing unit usability for...
We present an efficient model to analyze and improve the performance of general-purpose computation ...
This master's thesis deals with acceleration of pixel interpolation methods using the GPU and NVIDIA...
The research domain of Multimedia Content Analysis (MMCA) considers all aspects of the automated ext...
The purpose of this thesis is to present the computational performances of graphical processing unit...
Abstract—In this paper, we construe key factors in design and evaluation of image processing algorit...
This thesis deals with the implementation of a multi-view stereo algorithm in a massively parallel w...
This thesis deals with the implementation of a multi-view stereo algorithm in a massively parallel w...
Over the past few years, we have seen an exponential performance boost of the graphics processing un...
This paper compares the speed performance of a set of classic image algorithms for evaluating textur...
Graphics Processing Units (GPUs) are microprocessors attached to graphics cards, which are dedicated...
Abstract—Many general-purpose applications exploit Graphics Processing Units (GPUs) by executing a s...
The objective of this thesis is to optimize the Seam Carving method in CUDA (Compute Unified Device ...
We first present two GPU implementations of the standard Inverse Distance Weighting (IDW) interpolat...
This paper presents a framework for GPU-accelerated N-view triangulation in multi-view reconstructio...
This research study is based on the growing interest towards graphical processing unit usability for...
We present an efficient model to analyze and improve the performance of general-purpose computation ...