The use of linear filters, i.e. convolutions, inevitably introduces dependencies in the uncertainties of the filter outputs. Such non-vanishing covariances appear both between different positions and between the responses from different filters (even at the same position). This report describes how these covariances between the output of linear filters can be computed. We then examine the induced covariance matrices for some typical 1D and 2D filters. Finally the total noise reduction properties are examined
A new parameter estimation method is presented, applicable to many computer vision problems. It oper...
We consider a broad class of Kalman-Bucy filter extensions for continuous-time systems with non-line...
In this paper it is shown how false operator responses due to missing or uncertain data can be signi...
The use of linear filters, i.e. convolutions, inevitably introduces dependencies in the uncertain-ti...
© 2003 COPYRIGHT SPIE--The International Society for Optical EngineeringThis paper assesses some of ...
The problem of estimating a degraded image using observations acquired from multiple sensors is addr...
There is loss of efficiency when an estimated noise covariance matrix is used in the place of the un...
This paper discusses a method for estimating the covariance matrix of a multivariate stationary proc...
Image analysis is a branch of signal analysis that focuses on the extraction of meaningful informati...
Computer vision aims at producing numerical or symbolic information, e.g., decisions, by acquiring, ...
AbstractMany studies have been made in the past for optimization using covariance matrices of featur...
An estimator of the covariance matrix in signal processing is derived when the noise covariance matr...
This paper describes how to propagate approximately additive random perturbations through any kind o...
In state reconstruction problems, the statistics of the noise affecting the state equations is often...
This paper describes how to propagate approximately additive random perturbations through any kind o...
A new parameter estimation method is presented, applicable to many computer vision problems. It oper...
We consider a broad class of Kalman-Bucy filter extensions for continuous-time systems with non-line...
In this paper it is shown how false operator responses due to missing or uncertain data can be signi...
The use of linear filters, i.e. convolutions, inevitably introduces dependencies in the uncertain-ti...
© 2003 COPYRIGHT SPIE--The International Society for Optical EngineeringThis paper assesses some of ...
The problem of estimating a degraded image using observations acquired from multiple sensors is addr...
There is loss of efficiency when an estimated noise covariance matrix is used in the place of the un...
This paper discusses a method for estimating the covariance matrix of a multivariate stationary proc...
Image analysis is a branch of signal analysis that focuses on the extraction of meaningful informati...
Computer vision aims at producing numerical or symbolic information, e.g., decisions, by acquiring, ...
AbstractMany studies have been made in the past for optimization using covariance matrices of featur...
An estimator of the covariance matrix in signal processing is derived when the noise covariance matr...
This paper describes how to propagate approximately additive random perturbations through any kind o...
In state reconstruction problems, the statistics of the noise affecting the state equations is often...
This paper describes how to propagate approximately additive random perturbations through any kind o...
A new parameter estimation method is presented, applicable to many computer vision problems. It oper...
We consider a broad class of Kalman-Bucy filter extensions for continuous-time systems with non-line...
In this paper it is shown how false operator responses due to missing or uncertain data can be signi...