Hardware-software implementation of the PointPillars network for 3D object detection in point clouds

Joanna Stanisz, K. Lis, T. Kryjak, M. Gorgon
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引用次数: 1

Abstract

In this paper, we present a hardware-software implementation of a deep neural network for object detection based on a point cloud obtained by a LiDAR sensor. The Brevitas / PyTorch tools were used for network quantisation and the FINN tool for hardware implementation in the reprogrammable Zynq UltraScale+ MPSoC device. The PointPillars network was used in the research, as it is a reasonable compromise between detection accuracy and calculation complexity. The obtained results show that quite a significant computation precision limitation along with a few network architecture simplifications allows the solution to be implemented on an heterogeneous embedded platform with reasonable detection accuracy.
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点云中三维目标检测的PointPillars网络的硬件软件实现
在本文中,我们提出了一种基于激光雷达传感器获得的点云的深度神经网络目标检测的硬件软件实现。Brevitas / PyTorch工具用于网络量化,FINN工具用于可编程Zynq UltraScale+ MPSoC设备的硬件实现。研究中使用了PointPillars网络,因为它在检测精度和计算复杂度之间取得了合理的折衷。结果表明,该方案在计算精度上有相当大的限制,并且对网络架构进行了一些简化,使得该方案能够在异构嵌入式平台上实现,并且具有合理的检测精度。
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