Spatiotemporal signal reconstruction from samples randomly gathered in a multidimensional space with uncertainty is a crucial problem for a variety of applications. Such a problem generalizes the reconstruction of a deterministic signal and that of a stationary random process in one dimension, which was first addressed by Whittaker, Kotelnikov, and Shannon. In this work we analyze multidimensional random sampling with uncertainties jointly accounting for signal properties (signal spectrum and spatial correlation) and for sampling properties (inhomogeneous sample spatial distribution, sample availability, and non-ideal knowledge of sample positions). The reconstructed signal spectrum and the signal reconstruction accuracy are derived as a fu...
The state of the art in sampling theory now contains several theorems for signals that are non-bandl...
We conduct a simulation study to assess the performance of conventional distance sampling estimators...
We present two methods for efficiently sampling the response (trajectory space) of dynamical systems...
Spatiotemporal signal reconstruction from samples randomly gathered in a multidimensional space with...
Spatiotemporal signal reconstruction from samples randomly gathered in a multidimensional space with...
Process estimation from randomly deployed samples in a multidimensional space with sample position ...
none2noThe spatial distribution of sensing nodes plays a crucial role in signal sampling and reconst...
A new lower bound on the average reconstruction error variance of multidimensional sampling and reco...
A spatially distributed system for signal sampling and reconstruction consists of huge amounts of sm...
The well-known Whittaker-Kotel'nikov-Shannon sampling theorem for frequency-bandlimited functions of...
We focus on the problem of representing a nonstationary finite-energy random field, with finitely ma...
none3noThe deployment of sensing nodes is crucial for applications relying on the reconstruction of ...
Abstract—The deployment of sensing nodes is crucial for appli- cations relying on the reconstruction...
We consider the estimation of the Fourier transform of multidimensional deterministic signals from a...
In many applications of current interest, the observations are represented as a signal defined over ...
The state of the art in sampling theory now contains several theorems for signals that are non-bandl...
We conduct a simulation study to assess the performance of conventional distance sampling estimators...
We present two methods for efficiently sampling the response (trajectory space) of dynamical systems...
Spatiotemporal signal reconstruction from samples randomly gathered in a multidimensional space with...
Spatiotemporal signal reconstruction from samples randomly gathered in a multidimensional space with...
Process estimation from randomly deployed samples in a multidimensional space with sample position ...
none2noThe spatial distribution of sensing nodes plays a crucial role in signal sampling and reconst...
A new lower bound on the average reconstruction error variance of multidimensional sampling and reco...
A spatially distributed system for signal sampling and reconstruction consists of huge amounts of sm...
The well-known Whittaker-Kotel'nikov-Shannon sampling theorem for frequency-bandlimited functions of...
We focus on the problem of representing a nonstationary finite-energy random field, with finitely ma...
none3noThe deployment of sensing nodes is crucial for applications relying on the reconstruction of ...
Abstract—The deployment of sensing nodes is crucial for appli- cations relying on the reconstruction...
We consider the estimation of the Fourier transform of multidimensional deterministic signals from a...
In many applications of current interest, the observations are represented as a signal defined over ...
The state of the art in sampling theory now contains several theorems for signals that are non-bandl...
We conduct a simulation study to assess the performance of conventional distance sampling estimators...
We present two methods for efficiently sampling the response (trajectory space) of dynamical systems...