Optimisation 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: 10

Abstract

In this paper we present our research on the optimisation of a deep neural network for 3D object detection in a point cloud. Techniques like quantisation and pruning available in the Brevitas and PyTorch tools were used. We performed the experiments for the PointPillars network, which offers a reasonable compromise between detection accuracy and calculation complexity. The aim of this work was to propose a variant of the network which we will ultimately implement in an FPGA device. This will allow for real-time LiDAR data processing with low energy consumption. The obtained results indicate that even a significant quantisation from 32-bit floating point to 2-bit integer in the main part of the algorithm, results in 5%-9% decrease of the detection accuracy, while allowing for almost a 16-fold reduction in size of the model.
点云中三维目标检测的PointPillars网络优化
在本文中,我们提出了我们的研究优化深度神经网络的三维目标检测在点云。使用了Brevitas和PyTorch工具中可用的量化和修剪等技术。我们对PointPillars网络进行了实验,该网络在检测精度和计算复杂度之间提供了合理的折衷。这项工作的目的是提出一种网络的变体,我们最终将在FPGA设备中实现。这将允许以低能耗进行实时激光雷达数据处理。所得结果表明,即使在算法的主要部分将32位浮点数显著量化为2位整数,也会导致检测精度降低5%-9%,同时允许模型大小减少近16倍。
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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