The ability to decide if a solution to a pose-graph problem is globally optimal is of high significance for safety-critical applications. Converging to a local-minimum may result in severe estimation errors along the estimated trajectory. In this paper, we propose a graph neural network based on a novel implementation of a graph convolutional-like layer, called PoseConv, to perform classification of pose-graphs as optimal or sub-optimal. The operation of PoseConv required incorporating a new node feature, referred to as cost, to hold the information that the nodes will communicate. A training and testing dataset was generated based on publicly available bench-marking pose-graphs. The neural classifier is then trained and extensively tested ...
Simultaneous Localization and Mapping (SLAM) aims to estimate the positions and orientations of the ...
While graph-based representations allow an efficient solution to the SLAM problem posing it as a non...
In this paper, we analyze and extend the recently proposed closed-form online pose-chain simultaneou...
In recent SLAM (simultaneous localization and mapping) literature, Pose Only optimization methods ha...
Modern state estimation is often formulated as an optimization problem and solved using efficient lo...
The graph optimization has become the mainstream technology to solve the problems of SLAM (simultane...
Pose Graph Optimisation is a technique that is used to solve the Simultaneous Localisation and Mappi...
Abstract — Learning models of the environment is one of the fundamental tasks of mobile robots since...
Pose graph optimization is a special case of the simultaneous localization and mapping problem where...
Neural networks have long been a promising model for creating high performance robotic systems, from...
Learning models of the environment is one of the fundamental tasks of mobile robots since maps are n...
To date, technology is in constant development, and researchers all over the world are pushing its b...
A novel closed-form solution for pose-graph SLAM is presented. It optimizes pose-graphs of particula...
University of Technology Sydney. Faculty of Engineering and Information Technology.For a robot to na...
Pose graphs have become a popular representation for solving the simultaneous localization and mappi...
Simultaneous Localization and Mapping (SLAM) aims to estimate the positions and orientations of the ...
While graph-based representations allow an efficient solution to the SLAM problem posing it as a non...
In this paper, we analyze and extend the recently proposed closed-form online pose-chain simultaneou...
In recent SLAM (simultaneous localization and mapping) literature, Pose Only optimization methods ha...
Modern state estimation is often formulated as an optimization problem and solved using efficient lo...
The graph optimization has become the mainstream technology to solve the problems of SLAM (simultane...
Pose Graph Optimisation is a technique that is used to solve the Simultaneous Localisation and Mappi...
Abstract — Learning models of the environment is one of the fundamental tasks of mobile robots since...
Pose graph optimization is a special case of the simultaneous localization and mapping problem where...
Neural networks have long been a promising model for creating high performance robotic systems, from...
Learning models of the environment is one of the fundamental tasks of mobile robots since maps are n...
To date, technology is in constant development, and researchers all over the world are pushing its b...
A novel closed-form solution for pose-graph SLAM is presented. It optimizes pose-graphs of particula...
University of Technology Sydney. Faculty of Engineering and Information Technology.For a robot to na...
Pose graphs have become a popular representation for solving the simultaneous localization and mappi...
Simultaneous Localization and Mapping (SLAM) aims to estimate the positions and orientations of the ...
While graph-based representations allow an efficient solution to the SLAM problem posing it as a non...
In this paper, we analyze and extend the recently proposed closed-form online pose-chain simultaneou...