Abstract

There are many sources of point cloud data, such as the point cloud model obtained after a bundle adjustment of aerial images, the point cloud acquired by scanning a vehicle-borne light detection and ranging (LiDAR), the point cloud acquired by terrestrial laser scanning, etc. Different sensors use different processing methods. They have their own advantages and disadvantages in terms of accuracy, range and point cloud magnitude. Point cloud fusion can combine the advantages of each point cloud to generate a point cloud with higher accuracy. Following the classic Iterative Closest Point (ICP), a virtual namesake point multi-source point cloud data fusion based on Fast Point Feature Histograms (FPFH) feature difference is proposed. For the multi-source point cloud with noise, different sampling resolution and local distortion, it can acquire better registration effect and improve the accuracy of low precision point cloud. To find the corresponding point pairs in the ICP algorithm, we use the FPFH feature difference, which can combine surrounding neighborhood information and have strong robustness to noise, to generate virtual points with the same name to obtain corresponding point pairs for registration. Specifically, through the establishment of voxels, according to the F2 distance of the FPFH of the target point cloud and the source point cloud, the convolutional neural network is used to output a virtual and more realistic and theoretical corresponding point to achieve multi-source Point cloud data registration. Compared with the ICP algorithm for finding corresponding points in existing points, this method is more reasonable and more accurate, and can accurately correct low-precision point cloud in detail. The experimental results show that the accuracy of our method and the best algorithm is equivalent under the clean point cloud and point cloud of different resolutions. In the case of noise and distortion in the point cloud, our method is better than other algorithms. For low-precision point cloud, it can better match the target point cloud in detail, with better stability and robustness.

Highlights

  • In recent years, point cloud data have been applied to more field, such as robots and autonomous driving, face recognition, gesture recognition, etc

  • A method of virtual namesake point multi‐source point cloud data fusion based on Fast Point Feature Histograms (FPFH) feature difference is proposed

  • It can synthesize the probability according to the F2 distance between the voxel center points and the existing points in the target point cloud

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Summary

Introduction

Point cloud data have been applied to more field, such as robots and autonomous driving, face recognition, gesture recognition, etc. In the face of autonomous driving systems above L3, high-precision maps have become an indispensable part. A highprecision map is a special map with centimeter-level accuracy and detailed lane information compared to general navigation maps. It can describe road more comprehensively and in detail and reflect the real situation of the road more accurately [1]. There are three methods of obtaining high-precision map point cloud data: mobile surveying vehicle collection, drone aerial survey and 1:500 topographic map [2]. The point cloud data obtained are very different in accuracy and range from the data set. How to fuse the point cloud data obtained by different sensors and combine their respective advantages is the key to generating high-precision maps. There have been some studies using oblique photography, vehicle-borne light detection and ranging (LiDAR) or multi-source point cloud data fusion to perform 3D reconstruction [3,4]

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