A unified accelerator design for LiDAR SLAM algorithms for low-end FPGAs

K. Sugiura, Hiroki Matsutani
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引用次数: 2

Abstract

A fast and reliable LiDAR (Light Detection and Ranging) SLAM (Simultaneous Localization and Mapping) system is the growing need for autonomous mobile robots, which are used for a variety of tasks such as indoor cleaning, navigation, and transportation. To bridge the gap between the limited processing power on such robots and the high computational requirement of the SLAM system, in this paper we propose a unified accelerator design for 2D SLAM algorithms on resource-limited FPGA devices. As scan matching is the heart of these algorithms, the proposed FPGA-based accelerator utilizes scan matching cores on the programmable logic part and users can switch the SLAM algorithms to adapt to performance requirements and environments without modifying and re-synthesizing the logic part. We integrate the accelerator into two representative SLAM algorithms, namely particle filter-based and graph-based SLAM. They are evaluated in terms of resource utilization, processing speed, and quality of output results with various real-world datasets, highlighting their algorithmic characteristics. Experiment results on a Pynq-Z2 board demonstrate that scan matching is accelerated by 13.67–14.84x, improving the overall performance of particle filter-based and graph-based SLAM by 4.03–4.67x and 3.09–4.00x respectively, while maintaining the accuracy comparable to their software counterparts and even state-of-the-art methods.
用于低端fpga的激光雷达SLAM算法的统一加速器设计
快速可靠的激光雷达(光探测和测距)SLAM(同步定位和测绘)系统是对自主移动机器人日益增长的需求,用于各种任务,如室内清洁,导航和运输。为了弥补此类机器人有限的处理能力与SLAM系统的高计算需求之间的差距,本文提出了一种基于资源有限的FPGA设备的二维SLAM算法的统一加速器设计。由于扫描匹配是这些算法的核心,所提出的基于fpga的加速器在可编程逻辑部分使用扫描匹配内核,用户可以切换SLAM算法以适应性能要求和环境,而无需修改和重新合成逻辑部分。我们将加速器集成到两种具有代表性的SLAM算法中,即基于粒子滤波的SLAM算法和基于图的SLAM算法。它们根据资源利用率、处理速度和各种真实世界数据集的输出结果质量进行评估,突出其算法特征。在Pynq-Z2板上的实验结果表明,扫描匹配速度提高了13.67 - 14.84倍,基于粒子滤波和基于图的SLAM的整体性能分别提高了4.03 - 4.67倍和3.09 - 4.00倍,同时保持了与软件甚至最先进方法相当的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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