An Integrated FPGA Accelerator for Deep Learning-Based 2D/3D Path Planning

IF 3.6 2区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Transactions on Computers Pub Date : 2024-03-18 DOI:10.1109/TC.2024.3377895
Keisuke Sugiura;Hiroki Matsutani
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Abstract

Path planning is a crucial component for realizing the autonomy of mobile robots. However, due to limited computational resources on mobile robots, it remains challenging to deploy state-of-the-art methods and achieve real-time performance. To address this, we propose P3Net (PointNet-based Path Planning Networks), a lightweight deep-learning-based method for 2D/3D path planning, and design an IP core (P3NetCore) targeting FPGA SoCs (Xilinx ZCU104). P3Net improves the algorithm and model architecture of the recently-proposed MPNet. P3Net employs an encoder with a PointNet backbone and a lightweight planning network in order to extract robust point cloud features and sample path points from a promising region. P3NetCore is comprised of the fully-pipelined point cloud encoder, batched bidirectional path planner, and parallel collision checker, to cover most part of the algorithm. On the 2D (3D) datasets, P3Net with the IP core runs 30.52–186.36x and 7.68–143.62x (15.69–93.26x and 5.30–45.27x) faster than ARM Cortex CPU and Nvidia Jetson while only consuming 0.255W (0.809W), and is up to 1278.14x (455.34x) power-efficient than the workstation. P3Net improves the success rate by up to 28.2% and plans a near-optimal path, leading to a significantly better tradeoff between computation and solution quality than MPNet and the state-of-the-art sampling-based methods.
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基于深度学习的 2D/3D 路径规划的 FPGA 集成加速器
路径规划是实现移动机器人自主性的关键组成部分。然而,由于移动机器人的计算资源有限,部署最先进的方法并实现实时性能仍具有挑战性。为解决这一问题,我们提出了基于深度学习的轻量级 2D/3D 路径规划方法 P3Net(基于 PointNet 的路径规划网络),并设计了针对 FPGA SoC(赛灵思 ZCU104)的 IP 核(P3NetCore)。P3Net 改进了最近提出的 MPNet 的算法和模型架构。P3Net 采用带有 PointNet 主干网和轻量级规划网的编码器,以便从有希望的区域提取稳健的点云特征和路径点样本。P3NetCore 由全管道点云编码器、批量双向路径规划器和并行碰撞检查器组成,涵盖了算法的大部分内容。在二维(三维)数据集上,IP 核的 P3Net 运行速度是 ARM Cortex CPU 和 Nvidia Jetson 的 30.52-186.36 倍和 7.68-143.62 倍(15.69-93.26 倍和 5.30-45.27 倍),而功耗仅为 0.255W (0.809W),是工作站的 1278.14 倍(455.34 倍)。P3Net 将成功率提高了 28.2%,并规划了一条接近最优的路径,从而在计算和解决方案质量之间实现了明显优于 MPNet 和最先进的基于采样的方法的权衡。
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来源期刊
IEEE Transactions on Computers
IEEE Transactions on Computers 工程技术-工程:电子与电气
CiteScore
6.60
自引率
5.40%
发文量
199
审稿时长
6.0 months
期刊介绍: The IEEE Transactions on Computers is a monthly publication with a wide distribution to researchers, developers, technical managers, and educators in the computer field. It publishes papers on research in areas of current interest to the readers. These areas include, but are not limited to, the following: a) computer organizations and architectures; b) operating systems, software systems, and communication protocols; c) real-time systems and embedded systems; d) digital devices, computer components, and interconnection networks; e) specification, design, prototyping, and testing methods and tools; f) performance, fault tolerance, reliability, security, and testability; g) case studies and experimental and theoretical evaluations; and h) new and important applications and trends.
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