Recently a SLAM algorithm based on biological principles (RatSLAM) has been proposed. It was proven to perform well in large and demanding scenarios. In this paper we establish a comparison of the principles underlying this algorithm with standard probabilistic SLAM approaches and identify the key difference to be an additive update step. Using this insight, we derive the novel, non-Bayesian Causal Update filter that is suitable for application in appearance-based SLAM. We successfully apply this new filter to two demanding vision-only urban SLAM problems of 5 and 66 km length. We show that it can functionally replace the core of RatSLAM, gaining a massive speed-up
This electronic version was submitted by the student author. The certified thesis is available in th...
This thesis focuses on the use of unscented transformation method to solve a simultaneous localizati...
This paper describes a new system, dubbed Continuous Appearance-based Trajectory Simultaneous Locali...
Recently a SLAM algorithm based on biological principles (RatSLAM) has been proposed. It was proven ...
Abstract: A SLAM algorithm inspired by biological principles has been recently proposed and shown to...
We discuss recently published models of neural information processing under uncertainty and a SLAM s...
This paper describes a novel probabilistic approach to incorporating odometric information into appe...
Abstract—In continuation of our previous work on visual, appearance-based localization and mapping, ...
International audienceThis paper introduces a new approach to SLAM which combines an Information Fil...
This paper introduces a new approach to SLAM which combines an Information Filter and a non linear o...
In this paper we propose a method to apply prior geometric information to Kalman Filter-based SLAM. ...
International audienceThis paper presents a solution to the consistency problem of SLAM algorithms. ...
The paper presents a method aiming at improving the reliability of Simultaneous Localization And Map...
Abstract. In our previous work on visual, appearance-based localiza-tion and mapping, we presented i...
In this paper we describe the Combined Filter, a judicious combination of Extended Kalman (EKF) and ...
This electronic version was submitted by the student author. The certified thesis is available in th...
This thesis focuses on the use of unscented transformation method to solve a simultaneous localizati...
This paper describes a new system, dubbed Continuous Appearance-based Trajectory Simultaneous Locali...
Recently a SLAM algorithm based on biological principles (RatSLAM) has been proposed. It was proven ...
Abstract: A SLAM algorithm inspired by biological principles has been recently proposed and shown to...
We discuss recently published models of neural information processing under uncertainty and a SLAM s...
This paper describes a novel probabilistic approach to incorporating odometric information into appe...
Abstract—In continuation of our previous work on visual, appearance-based localization and mapping, ...
International audienceThis paper introduces a new approach to SLAM which combines an Information Fil...
This paper introduces a new approach to SLAM which combines an Information Filter and a non linear o...
In this paper we propose a method to apply prior geometric information to Kalman Filter-based SLAM. ...
International audienceThis paper presents a solution to the consistency problem of SLAM algorithms. ...
The paper presents a method aiming at improving the reliability of Simultaneous Localization And Map...
Abstract. In our previous work on visual, appearance-based localiza-tion and mapping, we presented i...
In this paper we describe the Combined Filter, a judicious combination of Extended Kalman (EKF) and ...
This electronic version was submitted by the student author. The certified thesis is available in th...
This thesis focuses on the use of unscented transformation method to solve a simultaneous localizati...
This paper describes a new system, dubbed Continuous Appearance-based Trajectory Simultaneous Locali...