Customize Consent Preferences

We use cookies to help you navigate efficiently and perform certain functions. You will find detailed information about all cookies under each consent category below.

The cookies that are categorized as "Necessary" are stored on your browser as they are essential for enabling the basic functionalities of the site. ... 

Always Active

Necessary cookies are required to enable the basic features of this site, such as providing secure log-in or adjusting your consent preferences. These cookies do not store any personally identifiable data.

Functional cookies help perform certain functionalities like sharing the content of the website on social media platforms, collecting feedback, and other third-party features.

Analytical cookies are used to understand how visitors interact with the website. These cookies help provide information on metrics such as the number of visitors, bounce rate, traffic source, etc.

Performance cookies are used to understand and analyze the key performance indexes of the website which helps in delivering a better user experience for the visitors.

Advertisement cookies are used to provide visitors with customized advertisements based on the pages you visited previously and to analyze the effectiveness of the ad campaigns.

We present an approach for estimating a mobile robot’s pose w.r.t. the allocentric coordinates of a network of static cameras using multi-view RGB images. The images are processed online, locally on smart edge sensors by deep neural networks to detect the robot and estimate 2D keypoints defined at distinctive positions of the 3D robot model. Robot keypoint detections are synchronized and fused on a central backend, where the robot’s pose is estimated via multi-view minimization of reprojection errors. Through the pose estimation from external cameras, the robot’s localization can be initialized in an allocentric map from a completely unknown state (kidnapped robot problem) and robustly tracked over time. We conduct a series of experiments evaluating the accuracy and robustness of the camera-based pose estimation compared to the robot’s internal navigation stack, showing that our camerabased method achieves pose errors below 3 cm and 1° and does not drift over time, as the robot is localized allocentrically. With the robot’s pose precisely estimated, its observations can be fused into the allocentric scene model. We show a realworld application, where observations from mobile robot and static smart edge sensors are fused to collaboratively build a 3D semantic map of a ∼240 m2 indoor environment.

 

Zitation:

Simon Bultmann, Raphael Memmesheimer, and Sven Behnke. External Camera-based Mobile Robot Pose Estimation for Collaborative Perception with Smart Edge Sensors in IEEE International Conference on Robotics and Automation (ICRA), London, UK, June 2023.

 

Mehr Informationen:

https://www.ais.uni-bonn.de/papers/ICRA_2023_Bultmann.pdf

https://www.ais.uni-bonn.de/videos/ICRA_2023_Bultmann