ac2SLAM: FPGA加速高精度SLAM与堆排序和并行关键点提取器

Cheng Wang, Yingkun Liu, Kedai Zuo, Jianming Tong, Yan Ding, Pengju Ren
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引用次数: 6

摘要

为了实现应用层的丰富功能,鲁棒和精确的同步定位和映射技术对机器人技术至关重要。然而,由于缺乏足够的计算能力和存储容量,在嵌入式设备中高效部署高精度SLAM是一个挑战。在这项工作中,我们提出了一个完整的加速方案,称为ac2SLAM,基于ORB-SLAM2算法,包括前端和后端,并在FPGA平台上实现。具体而言,所提出的ac2SLAM具有以下特点:1)可扩展的并行ORB提取器,用于在4%的误差下提取足够的关键点和分数,2)乒乓堆排序组件(pp-heapsort)用于选择重要关键点,可以实现单周期启动间隔,以减少加速器与主机CPU之间的数据传输量,3)潜在的并行加速策略用于后端优化。与在ARM处理器上运行ORB-SLAM2相比,ac2SLAM在TUM和KITTI数据集上的速度分别提高了2.1倍和2.7倍,同时保持了SOTA eSLAM 10%的误差。此外,FPGA加速前端比eSLAM和ARM分别快4.55倍和40倍。ac2SLAM在https://github.com/SLAM-Hardware/acSLAM上是完全开源的。
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ac2SLAM: FPGA Accelerated High-Accuracy SLAM with Heapsort and Parallel Keypoint Extractor
In order to fulfill the rich functions of the application layer, robust and accurate Simultaneous Localization and Mapping (SLAM) technique is very critical for robotics. However, due to the lack of sufficient computing power and storage capacity, it is challenging to delpoy high-accuracy SLAM in embedded devices efficiently. In this work, we propose a complete acceleration scheme, termed ac2SLAM, based on the ORB-SLAM2 algorithm including both front and back ends, and implement it on an FPGA platform. Specifically, the proposed ac2SLAM features with: 1) a scalable and parallel ORB extractor to extract sufficient keypoints and scores for throughput matching with 4% error, 2) a PingPong heapsort component (pp-heapsort) to select the significant keypoints, that could achieve single-cycle initiation interval to reduce the amount of data transfer between accelerator and the host CPU, and 3) the potential parallel acceleration strategies for the back-end optimization. Compared with running ORB-SLAM2 on the ARM processor, ac2SLAM achieves 2.1 × and 2.7 × faster in the TUM and KITTI datasets, while maintaining 10% error of SOTA eSLAM. In addition, the FPGA accelerated front-end achieves 4.55 × and 40 × faster than eSLAM and ARM. The ac2SLAM is fully open-sourced at https://github.com/SLAM-Hardware/acSLAM.
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