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Tree-D Fusion: Simulation-Ready Tree Dataset from Single Images with Diffusion Priors

Authors :
Lee, Jae Joong
Li, Bosheng
Beery, Sara
Huang, Jonathan
Fei, Songlin
Yeh, Raymond A.
Benes, Bedrich
Publication Year :
2024

Abstract

We introduce Tree D-fusion, featuring the first collection of 600,000 environmentally aware, 3D simulation-ready tree models generated through Diffusion priors. Each reconstructed 3D tree model corresponds to an image from Google's Auto Arborist Dataset, comprising street view images and associated genus labels of trees across North America. Our method distills the scores of two tree-adapted diffusion models by utilizing text prompts to specify a tree genus, thus facilitating shape reconstruction. This process involves reconstructing a 3D tree envelope filled with point markers, which are subsequently utilized to estimate the tree's branching structure using the space colonization algorithm conditioned on a specified genus.<br />Comment: Accepted to ECCV24

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.10330
Document Type :
Working Paper