Classification of LiDAR Point Cloud based on Multiscale Features and PointNet

Zhao Zhongyang, Cheng Yinglei, Shi Xiaosong, Qin Xianxiang, Sun Li
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引用次数: 1

Abstract

Aiming at classifying the feature of LiDAR point cloud data in complex scenario, this paper proposed a deep neural network model based on multi-scale features and PointNet. The method improves the local feature of PointNet and realize automatic classification of LiDAR point cloud under the complex scene. Firstly, this paper adds multi-scale network on the basis of PointNet network to extract the local features of points. And then these local features of different scales are composed into a multi-dimensional feature through the fully connected layer, and combined with the global features extracted by PointNet, the scores of each point class are returned to complete the point cloud classification. The deep neural network model proposed in this paper is verified using the Semantic3D dataset and the Vaihingen dataset provided by ISPRS. The experimental results show that the proposed algorithm achieves higher classification accuracy compared with other neural networks used for point cloud classification.
基于多尺度特征和点网的激光雷达点云分类
针对复杂场景下LiDAR点云数据的特征分类问题,提出了一种基于多尺度特征和PointNet的深度神经网络模型。该方法改进了PointNet的局部特征,实现了复杂场景下激光雷达点云的自动分类。首先,在PointNet网络的基础上加入多尺度网络,提取点的局部特征;然后通过全连通层将这些不同尺度的局部特征组合成多维特征,并结合PointNet提取的全局特征,返回各点类的分数,完成点云分类。利用ISPRS提供的Semantic3D数据集和Vaihingen数据集对本文提出的深度神经网络模型进行了验证。实验结果表明,与其他用于点云分类的神经网络相比,该算法具有更高的分类精度。
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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