This paper presents a heterogeneous reconfigurable system for real-time applications applying particle filters. The system consists of an FPGA and a multi-threaded CPU. We propose a method to adapt the number of particles dynamically and utilise the run-time reconfigurability of the FPGA for reduced power and energy consumption. An application is developed which involves simultaneous mobile robot localisation and people tracking. It shows that the proposed adaptive particle filter can reduce up to 99% of computation time. Using run-time reconfiguration, we achieve 34% reduction in idle power and save 26-34% of system energy. Our proposed system is up to 7.39 times faster and 3.65 times more energy efficient than the Intel Xeon X5650 CPU wit...
Processing large volumes of information generally requires massive amounts of computational power, w...
Both computational performances and energy efficiency are required for the development of any mobile...
A particle filter is a Montecarlo-based method suitable for predicting future states o...
This article presents an approach for mapping real-time applications based on particle filters (PFs)...
Particle filtering is very reliable in modelling non-Gaussian and non-linear elements of physical sy...
Particle filtering is very reliable in modelling non-Gaussian and non-linear elements of physical sy...
Abstract- Visual target tracking is the key problem in intelligent video processing. Particle Filter...
This paper presents an adaptive Sequential Monte Carlo approach for real-time applications. Sequenti...
The particle filter is a Bayesian estimation technique based on Monte Carlo simulations. The non-par...
Abstract — We present the design, analysis, and real-time implementation of a distributed computatio...
This thesis addresses the problem of designing real-time reconfigurable systems. Our first contribut...
The particle filter (PF) has during the last decade been proposed for a wide range of localization a...
With the continued progress in VLSI technologies, we can integrate numerous cores in a single billio...
Processing large volumes of information generally requires massive amounts of computational power, w...
For this thesis the algorithm of a Particle Filter has been partly implemented on a Zynq All-program...
Processing large volumes of information generally requires massive amounts of computational power, w...
Both computational performances and energy efficiency are required for the development of any mobile...
A particle filter is a Montecarlo-based method suitable for predicting future states o...
This article presents an approach for mapping real-time applications based on particle filters (PFs)...
Particle filtering is very reliable in modelling non-Gaussian and non-linear elements of physical sy...
Particle filtering is very reliable in modelling non-Gaussian and non-linear elements of physical sy...
Abstract- Visual target tracking is the key problem in intelligent video processing. Particle Filter...
This paper presents an adaptive Sequential Monte Carlo approach for real-time applications. Sequenti...
The particle filter is a Bayesian estimation technique based on Monte Carlo simulations. The non-par...
Abstract — We present the design, analysis, and real-time implementation of a distributed computatio...
This thesis addresses the problem of designing real-time reconfigurable systems. Our first contribut...
The particle filter (PF) has during the last decade been proposed for a wide range of localization a...
With the continued progress in VLSI technologies, we can integrate numerous cores in a single billio...
Processing large volumes of information generally requires massive amounts of computational power, w...
For this thesis the algorithm of a Particle Filter has been partly implemented on a Zynq All-program...
Processing large volumes of information generally requires massive amounts of computational power, w...
Both computational performances and energy efficiency are required for the development of any mobile...
A particle filter is a Montecarlo-based method suitable for predicting future states o...