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基于深度学习的人体检测中激光雷达传感器参数增强及数据驱动影响分析

LiDAR Sensor Parameter Augmentation and Data-Driven Influence Analysis on Deep-Learning-Based People Detection.

作者信息

Haas Lukas, Sanne Florian, Zedelmeier Johann, Das Subir, Zeh Thomas, Kuba Matthias, Bindges Florian, Jakobi Martin, Koch Alexander W

机构信息

IFM-Institute for Driver Assistance Systems and Connected Mobility, Kempten University of Applied Sciences, Junkerstraße 1A, 87734 Benningen, Germany.

Institute for Measurement Systems and Sensor Technology, Technical University of Munich, Theresienstr. 90, 80333 Munich, Germany.

出版信息

Sensors (Basel). 2025 May 14;25(10):3114. doi: 10.3390/s25103114.

Abstract

Light detection and ranging (LiDAR) sensor technology for people detection offers a significant advantage in data protection. However, to design these systems cost- and energy-efficiently, the relationship between the measurement data and final object detection output with deep neural networks (DNNs) has to be elaborated. Therefore, this paper presents augmentation methods to analyze the influence of the distance, resolution, noise, and shading parameters of a LiDAR sensor in real point clouds for people detection. Furthermore, their influence on object detection using DNNs was investigated. A significant reduction in the quality requirements for the point clouds was possible for the measurement setup with only minor degradation on the object list level. The DNNs PointVoxel-Region-based Convolutional Neural Network (PV-RCNN) and Sparsely Embedded Convolutional Detection (SECOND) both only show a reduction in object detection of less than 5% with a reduced resolution of up to 32 factors, for an increase in distance of 4 factors, and with a Gaussian noise up to μ=0 and σ=0.07. In addition, both networks require an unshaded height of approx. 0.5 m from a detected person's head downwards to ensure good people detection performance without special training for these cases. The results obtained, such as shadowing information, are transferred to a software program to determine the minimum number of sensors and their orientation based on the mounting height of the sensor, the sensor parameters, and the ground area under consideration, both for detection at the point cloud level and object detection level.

摘要

用于人员检测的光探测与测距(LiDAR)传感器技术在数据保护方面具有显著优势。然而,为了以经济高效的方式设计这些系统,必须详细阐述测量数据与深度神经网络(DNN)最终目标检测输出之间的关系。因此,本文提出了增强方法,以分析LiDAR传感器的距离、分辨率、噪声和阴影参数在用于人员检测的真实点云中的影响。此外,还研究了它们对使用DNN进行目标检测的影响。对于测量设置而言,点云质量要求显著降低,而在目标列表级别仅有轻微降级。对于高达32倍的分辨率降低、4倍的距离增加以及高达μ = 0和σ = 0.07的高斯噪声,深度神经网络基于点体素的区域卷积神经网络(PV - RCNN)和稀疏嵌入式卷积检测(SECOND)在目标检测方面的降幅均仅小于5%。此外,两个网络都要求从检测到的人的头部向下约0.5 m的高度无阴影,以确保在无需针对这些情况进行特殊训练的情况下具有良好的人员检测性能。所获得的结果,如阴影信息,被传输到一个软件程序中,以便根据传感器的安装高度、传感器参数以及所考虑的地面区域,确定在点云级别检测和目标检测级别所需的最少传感器数量及其方向。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d44b/12115718/aa6ed76fba15/sensors-25-03114-g001.jpg

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