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Camera-LiDAR Multi-Level Sensor Fusion for Target Detection at the Network Edge

机译:相机-IDAR多级传感器融合用于网络边缘的目标检测

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摘要

There have been significant advances regarding target detection in the autonomous vehicle context. To develop more robust systems that can overcome weather hazards as well as sensor problems, the sensor fusion approach is taking the lead in this context. Laser Imaging Detection and Ranging (LiDAR) and camera sensors are two of the most used sensors for this task since they can accurately provide important features such as target´s depth and shape. However, most of the current state-of-the-art target detection algorithms for autonomous cars do not take into consideration the hardware limitations of the vehicle such as the reduced computing power in comparison with Cloud servers as well as the reduced latency. In this work, we propose Edge Computing Tensor Processing Unit (TPU) devices as hardware support due to their computing capabilities for machine learning algorithms as well as their reduced power consumption. We developed an accurate and small target detection model for these devices. Our proposed Multi-Level Sensor Fusion model has been optimized for the network edge, specifically for the Google Coral TPU. As a result, high accuracy results are obtained while reducing the memory consumption as well as the latency of the system using the challenging KITTI dataset.
机译:自主车辆环境中的目标检测存在显着进展。为了开发更强大的系统,可以克服天气危害以及传感器问题,传感器融合方法在此上下文中采用了优势。激光成像检测和测距(LIDAR)和相机传感器是此任务的两个最常用的传感器,因为它们可以准确地提供目标深度和形状等重要功能。然而,关于自动车辆的最新的最先进的目标检测算法不考虑车辆的硬件限制,例如与云服务器相比的降低的计算能力以及降低的延迟。在这项工作中,由于计算机学习算法的计算能力以及其降低的功耗,我们将边缘计算张力处理单元(TPU)设备作为硬件支持以及其降低的功耗。我们为这些设备开发了精确和小的目标检测模型。我们所提出的多级传感器融合模型已针对网络边缘进行优化,专门针对Google Coral TPU进行了优化。结果,获得了高精度的结果,同时利用具有挑战性的基提数据集来降低存储器消耗以及系统的延迟。

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