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 ORB-SLAM2/3 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.
Brief Announcement: Optimized GPU-accelerated Feature Extraction for ORB-SLAM Systems / Muzzini, F.; Capodieci, N.; Cavicchioli, R.; Rouxel, B.. - (2023), pp. 299-302. (Intervento presentato al convegno 35th ACM Symposium on Parallelism in Algorithms and Architectures, SPAA 2023 tenutosi a Orlando, FL nel JUN 17-19, 2023) [10.1145/3558481.3591310].
Brief Announcement: Optimized GPU-accelerated Feature Extraction for ORB-SLAM Systems
Muzzini F.
;Capodieci N.;Cavicchioli R.;Rouxel B.
2023
Abstract
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 ORB-SLAM2/3 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.Pubblicazioni consigliate
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