Target Detection from 3D Point-Cloud using Gaussian Function and CNN

ShuaiXin Liu, Jianying Zheng, Xiang Wang, Zhenyao Zhang, Rongchuan Sun
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引用次数: 1

Abstract

This paper proposes a roadside-LiDAR-based target detection method using Gaussian probability function and CNN. First of all, the point-cloud is projected by the orthographic projection method to obtain the feature information on three projection plain. Then the Gaussian probability function is used to convert them into three probability matrices as the three-channel input of convolutional neural network. Finally the targets are divided into three categories: pedestrian, motor vehicle and non-motor vehicle. The experiments are performed with real data collected from different times and different scenarios, the results show that the proposed method can detect targets accurately, and the accuracy can reach 90%. The method is independent of the point cloud density, it has the same effect on sparse or dense point clouds.
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基于高斯函数和CNN的三维点云目标检测
本文提出了一种基于高斯概率函数和CNN的路边激光雷达目标检测方法。首先,用正交投影法对点云进行投影,得到三个投影平面上的特征信息;然后利用高斯概率函数将它们转换成三个概率矩阵作为卷积神经网络的三通道输入。最后将目标对象分为三类:行人、机动车和非机动车。对不同时间、不同场景的真实数据进行了实验,结果表明,该方法能够准确地检测出目标,准确率可达90%。该方法与点云密度无关,对稀疏点云和密集点云具有相同的效果。
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