© 2003 COPYRIGHT SPIE--The International Society for Optical EngineeringThis paper assesses some of the practical ramifications of recent developments in estimating vision parameters given information characterizing the uncertainty of the data. This uncertainty information may sometimes be estimated in association with the observation process, and is usually represented in the form of covariance matrices. An empirical study is made of the conditions under which improved parameter estimates can be obtained from data when covariance information is available. We explore, in the case of fundamental matrix estimation and conic fitting, the extent to which the noise should be anisotropic and inhomogeneous if improvements over traditional methods ...
Almost all problems in computer vision are related in one form or another to the problem of estimati...
Almost all problems in computer vision are related in one form or another to the problem of estimati...
In prediction error identification, the information matrix plays a central role. Specifically, when ...
A new parameter estimation method is presented, applicable to many computer vision problems. It oper...
A new parameter estimation method is presented, applicable to many com-puter vision problems. It ope...
This thesis is concerned with fundamental algorithms for estimating parameters of geometric models t...
The use of linear filters, i.e. convolutions, inevitably introduces dependencies in the uncertaintie...
The use of linear filters, i.e. convolutions, inevitably introduces dependencies in the uncertain-ti...
AbstractMany studies have been made in the past for optimization using covariance matrices of featur...
Parameter inference with an estimated covariance matrix systematically loses information due to the ...
Computer vision aims at producing numerical or symbolic information, e.g., decisions, by acquiring, ...
©2001 IEEE. Personal use of this material is permitted. However, permission to reprint/republish thi...
Standard covariance matrix estimation procedures can be very affected by either the presence of outl...
Copyright © 2000 IEEEWe consider the problem of estimating parameters of a model described by an equ...
International audienceAs developed in this chapter, the detection performances are strongly linked t...
Almost all problems in computer vision are related in one form or another to the problem of estimati...
Almost all problems in computer vision are related in one form or another to the problem of estimati...
In prediction error identification, the information matrix plays a central role. Specifically, when ...
A new parameter estimation method is presented, applicable to many computer vision problems. It oper...
A new parameter estimation method is presented, applicable to many com-puter vision problems. It ope...
This thesis is concerned with fundamental algorithms for estimating parameters of geometric models t...
The use of linear filters, i.e. convolutions, inevitably introduces dependencies in the uncertaintie...
The use of linear filters, i.e. convolutions, inevitably introduces dependencies in the uncertain-ti...
AbstractMany studies have been made in the past for optimization using covariance matrices of featur...
Parameter inference with an estimated covariance matrix systematically loses information due to the ...
Computer vision aims at producing numerical or symbolic information, e.g., decisions, by acquiring, ...
©2001 IEEE. Personal use of this material is permitted. However, permission to reprint/republish thi...
Standard covariance matrix estimation procedures can be very affected by either the presence of outl...
Copyright © 2000 IEEEWe consider the problem of estimating parameters of a model described by an equ...
International audienceAs developed in this chapter, the detection performances are strongly linked t...
Almost all problems in computer vision are related in one form or another to the problem of estimati...
Almost all problems in computer vision are related in one form or another to the problem of estimati...
In prediction error identification, the information matrix plays a central role. Specifically, when ...