In range-based localization, the trajectory of a mobile object is estimated based on noisy range measurements between the object and known landmarks. In order to deal with this uncertain information, a Bayesian state estimator is presented, which exploits optimal stochastic linearization. Compared to standard state estimators like the Extended or Unscented Kalman Filter, where a point-based Gaussian approximation is used, the proposed approach considers the entire Gaussian density for linearization. By employing the common assumption that the state and measurements are jointly Gaussian, the linearization can be calculated in closed form and thus analytic expressions for the range-based localization problem can be derived
Abstract — In probabilistic mobile robotics, the development of measurement models plays a crucial r...
To navigate reliably in indoor environments, a mobile robot must know where it is. Thus, reliable p...
This paper presents a novel framework for the problem of target localization based on the range info...
In range-based localization, the trajectory of a mobile object is estimated based on noisy range mea...
In range-based pose tracking, the translation and rotation of an object with respect to a global coo...
This monograph covers theoretical aspects of simultaneous localization and map building for mobile r...
Abstract: A Gaussian sum filter (GSF) is proposed in this paper on simultaneous localization and map...
AbstractMobile robot localization is the problem of determining a robot's pose from sensor data. Thi...
This paper presents a new method to optimally combine motion measurements provided by proprioceptive...
This paper describes a solution to the localization problem based on the Extended Kalman filter Esti...
In this paper, we present algorithms for predicting a spatio-temporal random field measured by mobil...
This paper presents a fully Bayesian way to solve the simultaneous localization and spatial predicti...
In mobile robotics, most part of the techniques which aim the elaboration of an efficient algorithm ...
Localizing sources of physical quantities is often only possible in an indirect manner by observing ...
In this paper, we propose a robust novel approach with closed-form estimator for object tracking bas...
Abstract — In probabilistic mobile robotics, the development of measurement models plays a crucial r...
To navigate reliably in indoor environments, a mobile robot must know where it is. Thus, reliable p...
This paper presents a novel framework for the problem of target localization based on the range info...
In range-based localization, the trajectory of a mobile object is estimated based on noisy range mea...
In range-based pose tracking, the translation and rotation of an object with respect to a global coo...
This monograph covers theoretical aspects of simultaneous localization and map building for mobile r...
Abstract: A Gaussian sum filter (GSF) is proposed in this paper on simultaneous localization and map...
AbstractMobile robot localization is the problem of determining a robot's pose from sensor data. Thi...
This paper presents a new method to optimally combine motion measurements provided by proprioceptive...
This paper describes a solution to the localization problem based on the Extended Kalman filter Esti...
In this paper, we present algorithms for predicting a spatio-temporal random field measured by mobil...
This paper presents a fully Bayesian way to solve the simultaneous localization and spatial predicti...
In mobile robotics, most part of the techniques which aim the elaboration of an efficient algorithm ...
Localizing sources of physical quantities is often only possible in an indirect manner by observing ...
In this paper, we propose a robust novel approach with closed-form estimator for object tracking bas...
Abstract — In probabilistic mobile robotics, the development of measurement models plays a crucial r...
To navigate reliably in indoor environments, a mobile robot must know where it is. Thus, reliable p...
This paper presents a novel framework for the problem of target localization based on the range info...