In this paper, we propose a fine-to-coarse parallelization strategy in order to exploit, in a case study, a parallel hybrid architecture. We consider the Optical Flow numerical problem, modelled by partial differential equations, and implement a parallel multilevel software. Our hybrid software solution is a smart combination between codes on Graphic Processor Units (GPUs) and standard scientific parallel computing libraries on a cluster. Numerical experiments, on real satellite image sequences coming from a large dataset in a big data scenario, together with application profiling, highlight good results in terms of performance for the proposed approach
Abstract—We present an approach to parallel variational op-tical-flow computation by using an arbitr...
This thesis spans several research areas, where the main topics being parallel programming based on ...
Graphics processing units (GPUs) have a strong floating-point capability and a high memory bandwidth...
In this paper, we propose a fine-to-coarse parallelization strategy in order to exploit, in a case s...
In this work we present a multi-level parallel framework for the Optical Flow computation on a GPUs ...
AbstractIn this work we present a multi-level parallel framework for the Optical Flow computation on...
Abstract-The proposed work describes a highly parallel architecture for high performance optical flo...
This paper examines the potential of parallel computation methods for partial differential equations...
This paper examines the potential of parallel computation methods for pamal differential equations (...
Optical flow is a well known technique for the measurement of motion in images. Al-though it has man...
AbstractThis paper describes sum of absolute differences (SAD) algorithm to calculate optical flow f...
AbstractA hybrid parallelisation technique for distributed memory systems is investigated for a coup...
A hybrid scheme that utilizes MPI for distributed memory parallelism and OpenMP for shared memory pa...
We describe a parallel algorithm for computing optical flow from short-range motion. Regularizing op...
In recent years we witness the advent of the Internet of Things and the wide deployment of sensors i...
Abstract—We present an approach to parallel variational op-tical-flow computation by using an arbitr...
This thesis spans several research areas, where the main topics being parallel programming based on ...
Graphics processing units (GPUs) have a strong floating-point capability and a high memory bandwidth...
In this paper, we propose a fine-to-coarse parallelization strategy in order to exploit, in a case s...
In this work we present a multi-level parallel framework for the Optical Flow computation on a GPUs ...
AbstractIn this work we present a multi-level parallel framework for the Optical Flow computation on...
Abstract-The proposed work describes a highly parallel architecture for high performance optical flo...
This paper examines the potential of parallel computation methods for partial differential equations...
This paper examines the potential of parallel computation methods for pamal differential equations (...
Optical flow is a well known technique for the measurement of motion in images. Al-though it has man...
AbstractThis paper describes sum of absolute differences (SAD) algorithm to calculate optical flow f...
AbstractA hybrid parallelisation technique for distributed memory systems is investigated for a coup...
A hybrid scheme that utilizes MPI for distributed memory parallelism and OpenMP for shared memory pa...
We describe a parallel algorithm for computing optical flow from short-range motion. Regularizing op...
In recent years we witness the advent of the Internet of Things and the wide deployment of sensors i...
Abstract—We present an approach to parallel variational op-tical-flow computation by using an arbitr...
This thesis spans several research areas, where the main topics being parallel programming based on ...
Graphics processing units (GPUs) have a strong floating-point capability and a high memory bandwidth...