Sequential Monte Carlo probability hypothesis density (SMC-PHD) filtering is a popular method used recently for audio-visual (AV) multi-speaker tracking. However, due to the weight degeneracy problem, the posterior distribution can be represented poorly by the estimated probability, when only a few particles are present around the peak of the likelihood density function. To address this issue, we propose a new framework where particle flow (PF) is used to migrate particles smoothly from the prior to the posterior probability density. We consider both zero and non-zero diffusion particle flows (ZPF/NPF), and developed two new algorithms, AV-ZPF-SMC-PHD and AV-NPFSMC- PHD, where the speaker states from the previous frames are also considered ...
Target tracking is a challenging task and generally no analytical solution is available, especially ...
Target tracking is a challenging task and generally no analytical solution is available, especially ...
Particle filtering has emerged as a useful tool for tracking problems. However, the efficiency and a...
Sequential Monte Carlo probability hypothesis density (SMC-PHD) filtering is a popular method used r...
The sequential Monte Carlo probability hypothesis density (SMC-PHD) filter has been shown to be prom...
Sequential Monte Carlo probability hypothesis density (SMC- PHD) filtering has been recently exploit...
Tracking an unknown and time-varying number of targets (e.g., speakers) in indoor environments using...
Sequential Monte Carlo probability hypothesis density (SMC- PHD) filtering has been recently exploi...
Tracking an unknown and time-varying number of targets (e.g., speakers) in indoor environments using...
Sequential Monte Carlo probability hypothesis density (SMC- PHD) ltering has been recently exploited...
Sequential Monte Carlo probability hypothesis density (SMC- PHD) ltering has been recently exploited...
In this thesis, a novel approach is proposed for multi-speaker tracking by integrating audio and vis...
The probability hypothesis density (PHD) filter based on sequential Monte Carlo (SMC) approximation ...
In this thesis, a novel approach is proposed for multi-speaker tracking by integrating audio and vis...
The probability hypothesis density (PHD) filter based on sequential Monte Carlo (SMC) approximation...
Target tracking is a challenging task and generally no analytical solution is available, especially ...
Target tracking is a challenging task and generally no analytical solution is available, especially ...
Particle filtering has emerged as a useful tool for tracking problems. However, the efficiency and a...
Sequential Monte Carlo probability hypothesis density (SMC-PHD) filtering is a popular method used r...
The sequential Monte Carlo probability hypothesis density (SMC-PHD) filter has been shown to be prom...
Sequential Monte Carlo probability hypothesis density (SMC- PHD) filtering has been recently exploit...
Tracking an unknown and time-varying number of targets (e.g., speakers) in indoor environments using...
Sequential Monte Carlo probability hypothesis density (SMC- PHD) filtering has been recently exploi...
Tracking an unknown and time-varying number of targets (e.g., speakers) in indoor environments using...
Sequential Monte Carlo probability hypothesis density (SMC- PHD) ltering has been recently exploited...
Sequential Monte Carlo probability hypothesis density (SMC- PHD) ltering has been recently exploited...
In this thesis, a novel approach is proposed for multi-speaker tracking by integrating audio and vis...
The probability hypothesis density (PHD) filter based on sequential Monte Carlo (SMC) approximation ...
In this thesis, a novel approach is proposed for multi-speaker tracking by integrating audio and vis...
The probability hypothesis density (PHD) filter based on sequential Monte Carlo (SMC) approximation...
Target tracking is a challenging task and generally no analytical solution is available, especially ...
Target tracking is a challenging task and generally no analytical solution is available, especially ...
Particle filtering has emerged as a useful tool for tracking problems. However, the efficiency and a...