Abstract—We propose a novel method for robotic exploration that evaluates paths that minimize both the joint path and map entropy per meter traveled. The method uses Pose SLAM to update the path estimate, and grows an RRT * tree to generate the set of candidate paths. This action selection mechanism contrasts with previous appoaches in which the action set was built heuristically from a sparse set of candidate actions. The technique favorably compares agains the classical frontier-based exploration and other Active Pose SLAM methods in simulations in a common publicly available dataset. I
This short note addresses the problem of autonomous on-line path-panning for exploration and occupan...
The probabilistic belief networks that result from standard feature-based simultaneous localization ...
Abstract — Recent developments in human-robot interaction brings about higher requirements for robot...
We propose a novel method for robotic exploration that evaluates paths that minimize both the joint ...
We present an active exploration strategy that complements Pose SLAM [1] and optimal navigation in P...
This thesis reports research on mapping, path planning, and autonomous exploration. These are classi...
Abstract—The maps built by standard feature-based SLAM methods cannot be directly used to compute pa...
The maps that are built by standard feature-based simultaneous localization and mapping (SLAM) metho...
The probabilistic belief networks that result from standard feature-based simultaneous localization ...
We present a decision theoretic approach to mobile robot exploration. The method evaluates the reduc...
Pose SLAM is the variant of SLAM where only the robot trajectory is estimated and in which landmarks...
Tesis presentada por Rafael Valencia Carreño a través del programa de doctorado "Automatic Control, ...
Pose SLAMis the variant of simultaneous localization and map building (SLAM) is the variant of SLAM,...
In this work, an artificial intelligence approach to the problem finding a path for exploring an unk...
Abstract — Pose SLAM is the variant of SLAM where only the robot trajectory is estimated and in whic...
This short note addresses the problem of autonomous on-line path-panning for exploration and occupan...
The probabilistic belief networks that result from standard feature-based simultaneous localization ...
Abstract — Recent developments in human-robot interaction brings about higher requirements for robot...
We propose a novel method for robotic exploration that evaluates paths that minimize both the joint ...
We present an active exploration strategy that complements Pose SLAM [1] and optimal navigation in P...
This thesis reports research on mapping, path planning, and autonomous exploration. These are classi...
Abstract—The maps built by standard feature-based SLAM methods cannot be directly used to compute pa...
The maps that are built by standard feature-based simultaneous localization and mapping (SLAM) metho...
The probabilistic belief networks that result from standard feature-based simultaneous localization ...
We present a decision theoretic approach to mobile robot exploration. The method evaluates the reduc...
Pose SLAM is the variant of SLAM where only the robot trajectory is estimated and in which landmarks...
Tesis presentada por Rafael Valencia Carreño a través del programa de doctorado "Automatic Control, ...
Pose SLAMis the variant of simultaneous localization and map building (SLAM) is the variant of SLAM,...
In this work, an artificial intelligence approach to the problem finding a path for exploring an unk...
Abstract — Pose SLAM is the variant of SLAM where only the robot trajectory is estimated and in whic...
This short note addresses the problem of autonomous on-line path-panning for exploration and occupan...
The probabilistic belief networks that result from standard feature-based simultaneous localization ...
Abstract — Recent developments in human-robot interaction brings about higher requirements for robot...