The workflow of FTI-SLAM framework. The SLAM front-end comprises federated learning-enhanced deep neural networks for odometry, embedding, and loop closure detection. After optimising odometry based on loop constraints obtained from the front-end, the SLA (IMAGE)
Caption
The workflow of FTI-SLAM framework. The SLAM front-end comprises federated learning-enhanced deep neural networks for odometry, embedding, and loop closure detection. After optimising odometry based on loop constraints obtained from the front-end, the SLAM back-end provides the optimised trajectory.
Credit
Haochen Liu/University of Cambridge, Hantao Zhong/University of Cambridge, Weiyong Si/University of Essex
Usage Restrictions
Credit must be given to the creator.
License
CC BY