智能电厂单幅图像三维点云重建方法

Chen Hui, Zuo Yipeng, Cui Chenggang, Hu Yunfeng
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引用次数: 1

摘要

在电力巡检中,点云可以辅助无人设备进行定位和检测。雷达直接获取点云需要设备和周围环境。利用深度学习网络进行单幅图像生成,可以提高巡逻检测中三维点云的获取效率。为了产生高精度的重建结果,本文提出了一种用于三维点云重建的两阶段训练网络。首先,对图像到点云的网络进行训练,生成粗糙点云;其次,训练后的点云自编码器生成更精确的点云数据。最后,将两种模型相结合,得到精确的图像点云重建结果。该方法可以生成精确、均匀的点云三维模型。通过对综合数据集的检验和定量、定性分析,证明了该模型的有效性和实用性。与其他三种著名的网络相比,所提出的网络重构精度得到了提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An 3D point Cloud Reconstruction Approach from Single Image for Smart Power Plant
Point cloud can assist unmanned equipment to locate and detect in electric power inspection. It needs equipment and surrounding environment to obtain point cloud directly by radar. The efficiency of obtaining 3D point cloud in patrol inspection can be improved by using deep learning network through single image generation. In order to generate high-precision reconstruction results, a two-stage training network for 3D point cloud reconstruction is proposed in this paper. Firstly, the network of image to point cloud is trained and used to generate rough point cloud. Secondly, the trained point cloud auto-encoder generates more accurate point cloud data. Finally, the two models are combined to obtain accurate point cloud reconstruction results from an image. This method can generate accurate and uniform point cloud 3D model. The validity and practicability of the model are proved by the test of synthetic data set and the quantitative and qualitative analysis. Compared with the other three famous networks, the proposed network reconstruction accuracy is improved.
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