Evaluating the point cloud of individual trees generated from images based on Neural Radiance fields (NeRF) method
Hongyu Huang, Guoji Tian, Chongcheng Chen

TL;DR
This study evaluates the use of Neural Radiance Fields (NeRF) for 3D reconstruction of individual trees from images, showing advantages in efficiency and scene complexity handling but with some limitations in point cloud quality.
Contribution
It introduces NeRF-based tree reconstruction, demonstrating its effectiveness and comparing it with traditional photogrammetric and laser scanning methods.
Findings
NeRF achieves higher reconstruction success rate.
NeRF provides better canopy reconstruction.
NeRF requires fewer images for effective reconstruction.
Abstract
Three-dimensional (3D) reconstruction of trees has always been a key task in precision forestry management and research. Due to the complex branch morphological structure of trees themselves and the occlusions from tree stems, branches and foliage, it is difficult to recreate a complete three-dimensional tree model from a two-dimensional image by conventional photogrammetric methods. In this study, based on tree images collected by various cameras in different ways, the Neural Radiance Fields (NeRF) method was used for individual tree reconstruction and the exported point cloud models are compared with point cloud derived from photogrammetric reconstruction and laser scanning methods. The results show that the NeRF method performs well in individual tree 3D reconstruction, as it has higher successful reconstruction rate, better reconstruction in the canopy area, it requires less amount…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Forest ecology and management · Remote Sensing in Agriculture
