Abstract—We propose a novel robust estimation algorithm—the generalized projection-based M-estimator (gpbM), which does not require the user to specify any scale parameters. The algorithm is general and can handle heteroscedastic data with multiple linear constraints for single and multicarrier problems. The gpbM has three distinct stages—scale estimation, robust model estimation, and inlier/outlier dichotomy. In contrast, in its predecessor pbM, each model hypotheses was associated with a different scale estimate. For data containing multiple inlier structures with generally different noise covariances, the estimator iteratively determines one structure at a time. The model estimation can be further optimized by using Grassmann manifold th...
Most robust estimators, designed to solve computer vision problems, use random sampling to optimize ...
Robust parameter estimation is an important area in computer vision that underpins many practical ap...
Abstract. Well known estimation techniques in computational geom-etry usually deal only with single ...
Abstract Real-world visual data is often corrupted and requires the use of estimation techniques tha...
Abstract. We propose a solution to the problem of robust subspace estimation using the projection ba...
The goal of robust methods in computer vision is to extract all the information necessary to solve a...
The robust regression techniques in the RANSAC family are popular today in computer vision, but thei...
This article proposes a robust way to estimate the scale parameter of a generalised centered Gaussia...
Several high breakdown robust estimators have been developed to solve computer vision problems invol...
The nonlinear nature of many compute vision tasks involves analysis over curved nonlinear spaces emb...
It is now evident that some robust methods such as MM-estimator do not address the concept of bounde...
Markov random fields (MRF) have been widely used to model images in Bayesian frameworks for image re...
<div><p>This article studies <i>M</i>-type estimators for fitting robust generalized additive models...
In this paper, we introduce a robust framework for model based parameter estimation. The framework i...
Due to the introduction of the shape parameter, generalized Gaussian has better modelling capabiliti...
Most robust estimators, designed to solve computer vision problems, use random sampling to optimize ...
Robust parameter estimation is an important area in computer vision that underpins many practical ap...
Abstract. Well known estimation techniques in computational geom-etry usually deal only with single ...
Abstract Real-world visual data is often corrupted and requires the use of estimation techniques tha...
Abstract. We propose a solution to the problem of robust subspace estimation using the projection ba...
The goal of robust methods in computer vision is to extract all the information necessary to solve a...
The robust regression techniques in the RANSAC family are popular today in computer vision, but thei...
This article proposes a robust way to estimate the scale parameter of a generalised centered Gaussia...
Several high breakdown robust estimators have been developed to solve computer vision problems invol...
The nonlinear nature of many compute vision tasks involves analysis over curved nonlinear spaces emb...
It is now evident that some robust methods such as MM-estimator do not address the concept of bounde...
Markov random fields (MRF) have been widely used to model images in Bayesian frameworks for image re...
<div><p>This article studies <i>M</i>-type estimators for fitting robust generalized additive models...
In this paper, we introduce a robust framework for model based parameter estimation. The framework i...
Due to the introduction of the shape parameter, generalized Gaussian has better modelling capabiliti...
Most robust estimators, designed to solve computer vision problems, use random sampling to optimize ...
Robust parameter estimation is an important area in computer vision that underpins many practical ap...
Abstract. Well known estimation techniques in computational geom-etry usually deal only with single ...