Uncertainty quantification plays a key role in the development of autonomous systems, decision-making, and tracking over wireless sensor networks (WSNs). However, there is a need of providing uncertainty confidence bounds, especially for distributed machine learning-based tracking, dealing with different volumes of data collected by sensors. This paper aims to fill in this gap and proposes a distributed Gaussian process (DGP) approach for point target tracking and derives upper confidence bounds (UCBs) of the state estimates. A unique contribution of this paper includes the derived theoretical guarantees on the proposed approach and its maximum accuracy for tracking with and without clutter measurements. Particularly, the developed approach...
In this paper we study the problem of distributed estimation of a random vector in wireless sensor n...
A major issue in distributed wireless sensor networks (WSNs) is the design of efficient distributed ...
Target tracking using wireless sensor networks requires efficient collaboration among sensors to tra...
Tracking manoeuvring targets often relies on complex models with non-stationary parameters. Gaussian...
This paper addresses the problem of tracking a single target under measurement uncertainty due to cl...
This paper addresses the problem of tracking a single target under measurement uncertainty due to cl...
Online variational bayesian filtering-based mobile target tracking in wireless sensor networks. Abst...
Wireless mobile sensor networks are important for a number of strategic applications such as surveil...
This dissertation investigates several issues related to distributed estimation in wireless sensor n...
Localization is a key application for sensor networks. We propose a Bayesian method to analyze the l...
For efficient and accurate estimation of the location of objects, a network of sensors can be used t...
Tracking a target in a cluttered environment is a representative application of sensor networks. In ...
Abstract The recent interest in the development of wire-less sensor networks for surveillance intro...
Proliferation of low-cost, lightweight, and power efficient sensors and advances in networked system...
In this thesis, we tackle the intractable Bayesian inference problems in wireless sensor networks (W...
In this paper we study the problem of distributed estimation of a random vector in wireless sensor n...
A major issue in distributed wireless sensor networks (WSNs) is the design of efficient distributed ...
Target tracking using wireless sensor networks requires efficient collaboration among sensors to tra...
Tracking manoeuvring targets often relies on complex models with non-stationary parameters. Gaussian...
This paper addresses the problem of tracking a single target under measurement uncertainty due to cl...
This paper addresses the problem of tracking a single target under measurement uncertainty due to cl...
Online variational bayesian filtering-based mobile target tracking in wireless sensor networks. Abst...
Wireless mobile sensor networks are important for a number of strategic applications such as surveil...
This dissertation investigates several issues related to distributed estimation in wireless sensor n...
Localization is a key application for sensor networks. We propose a Bayesian method to analyze the l...
For efficient and accurate estimation of the location of objects, a network of sensors can be used t...
Tracking a target in a cluttered environment is a representative application of sensor networks. In ...
Abstract The recent interest in the development of wire-less sensor networks for surveillance intro...
Proliferation of low-cost, lightweight, and power efficient sensors and advances in networked system...
In this thesis, we tackle the intractable Bayesian inference problems in wireless sensor networks (W...
In this paper we study the problem of distributed estimation of a random vector in wireless sensor n...
A major issue in distributed wireless sensor networks (WSNs) is the design of efficient distributed ...
Target tracking using wireless sensor networks requires efficient collaboration among sensors to tra...