FastTrack: GPU-Accelerated Tracking for Visual SLAM
By: Kimia Khabiri , Parsa Hosseininejad , Shishir Gopinath and more
Potential Business Impact:
Makes robots see and move faster.
The tracking module of a visual-inertial SLAM system processes incoming image frames and IMU data to estimate the position of the frame in relation to the map. It is important for the tracking to complete in a timely manner for each frame to avoid poor localization or tracking loss. We therefore present a new approach which leverages GPU computing power to accelerate time-consuming components of tracking in order to improve its performance. These components include stereo feature matching and local map tracking. We implement our design inside the ORB-SLAM3 tracking process using CUDA. Our evaluation demonstrates an overall improvement in tracking performance of up to 2.8x on a desktop and Jetson Xavier NX board in stereo-inertial mode, using the well-known SLAM datasets EuRoC and TUM-VI.
Similar Papers
TurboMap: GPU-Accelerated Local Mapping for Visual SLAM
Robotics
Makes robots see and map faster.
Faster than Fast: Accelerating Oriented FAST Feature Detection on Low-end Embedded GPUs
CV and Pattern Recognition
Makes robots see and map faster on phones.
cuVSLAM: CUDA accelerated visual odometry and mapping
Robotics
Helps robots see and map their world.