Brief Announcement: Optimized GPU-accelerated Feature Extraction for ORB-SLAM Systems
Creators
Description
Reducing the execution time of ORB-SLAM algorithm is a crucial aspect of autonomous vehicles since it is computationally intensive for embedded boards. We propose a parallel GPU-based implementation, able to run on embedded boards, of the Tracking part of the ORBSLAM2/3 algorithm. Our implementation is not simply a GPU port of the tracking phase. Instead, we propose a novel method to accelerate image Pyramid construction on GPUs. Comparison against state-of-the-art CPU and GPU implementations, considering both computational time and trajectory errors shows improvement on execution time in well-known datasets, such as KITTI and EuRoC.
Files
Brief_Announcement__Optimized_GPU_accelerated_Feature_Extraction_for_ORB_SLAM_Systems.pdf
Files
(340.9 kB)
Name | Size | Download all |
---|---|---|
md5:410e7802fdbb5639fc0793b97520f2a5
|
340.9 kB | Preview Download |