In this work, loop-closure detection from LiDAR scans is defined as an image re-identification problem. Re-identification is performed by computing Euclidean distances of a query scan to a gallery set of previous scans. The distances are computed in a feature embedding space where the scans are mapped by a convolutional neural network (CNN). The network is trained using the triplet loss training strategy. In our experiments we compare different backbone networks, variants of the triplet loss and generic and LiDAR specific data augmentation techniques. With a realistic indoor dataset the best architecture obtains the mean average precision (mAP) above 0.94.Peer reviewe
Despite significant developments in the Simultaneous Localisation and Mapping (SLAM) problem, loop c...
Robots and autonomous systems need to know where they are within a map to navigate effectively. Thus...
A fundamental necessity in mobile robotics is the ability of knowing the robot own location. In many...
In this work, loop-closure detection from LiDAR scans is defined as an image re-identification probl...
A key component of graph-based SLAM systems is the ability to detect loop closures in a trajectory t...
This work presents an extension of graph-based SLAM methods to exploit the potential of 3D laser sca...
Although 2D LiDAR based Simultaneous Localization and Mapping (SLAM) is a relatively mature topic no...
Precise knowledge of pose is of great importance for reliable operation of mobile robots in outdoor ...
This work presents an extension of graph-based SLAM methods to exploit the potential of 3D laser sca...
We present a simple yet effective method to address loop closure detection in simultaneous localisat...
In the past two decades, robotics and autonomous vehicles have received ever increasing research att...
Place recognition is an important capability for autonomously navigating vehicles operating in compl...
This paper describes a 3D SLAM system using information from an actuated laser scanner and camera in...
Loop C losure Detection (LCD) is the essential module in the simultaneous localization and mapping (...
Despite significant developments in the Simultaneous Localisation and Mapping (SLAM) problem, loop c...
Despite significant developments in the Simultaneous Localisation and Mapping (SLAM) problem, loop c...
Robots and autonomous systems need to know where they are within a map to navigate effectively. Thus...
A fundamental necessity in mobile robotics is the ability of knowing the robot own location. In many...
In this work, loop-closure detection from LiDAR scans is defined as an image re-identification probl...
A key component of graph-based SLAM systems is the ability to detect loop closures in a trajectory t...
This work presents an extension of graph-based SLAM methods to exploit the potential of 3D laser sca...
Although 2D LiDAR based Simultaneous Localization and Mapping (SLAM) is a relatively mature topic no...
Precise knowledge of pose is of great importance for reliable operation of mobile robots in outdoor ...
This work presents an extension of graph-based SLAM methods to exploit the potential of 3D laser sca...
We present a simple yet effective method to address loop closure detection in simultaneous localisat...
In the past two decades, robotics and autonomous vehicles have received ever increasing research att...
Place recognition is an important capability for autonomously navigating vehicles operating in compl...
This paper describes a 3D SLAM system using information from an actuated laser scanner and camera in...
Loop C losure Detection (LCD) is the essential module in the simultaneous localization and mapping (...
Despite significant developments in the Simultaneous Localisation and Mapping (SLAM) problem, loop c...
Despite significant developments in the Simultaneous Localisation and Mapping (SLAM) problem, loop c...
Robots and autonomous systems need to know where they are within a map to navigate effectively. Thus...
A fundamental necessity in mobile robotics is the ability of knowing the robot own location. In many...