3D Scene Reconstruction of Architectural Engineering Based on 3D Gaussian Splatting
DOI:
https://doi.org/10.54691/k2rrnc91Keywords:
3D reconstruction, UAV, radiation field, 3D gaussian.Abstract
In order to solve the problems of high time cost, poor rendering quality and low efficiency of manual maintenance in the field of engineering and architecture, a novel method combining 3D Gaussian algorithm for real-world reconstruction was proposed. The method uses UAV aerial photography for data collection, and uses point cloud data for reconstruction, which realizes the real-time rendering of the radiation field, which provides a significant acceleration for scene optimization and novel view synthesis. It greatly improves the efficiency and accuracy in the field of construction engineering.
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