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ArtFormer: Controllable Generation of Diverse 3D Articulated Objects

About

This paper presents a novel framework for modeling and conditional generation of 3D articulated objects. Troubled by flexibility-quality tradeoffs, existing methods are often limited to using predefined structures or retrieving shapes from static datasets. To address these challenges, we parameterize an articulated object as a tree of tokens and employ a transformer to generate both the object's high-level geometry code and its kinematic relations. Subsequently, each sub-part's geometry is further decoded using a signed-distance-function (SDF) shape prior, facilitating the synthesis of high-quality 3D shapes. Our approach enables the generation of diverse objects with high-quality geometry and varying number of parts. Comprehensive experiments on conditional generation from text descriptions demonstrate the effectiveness and flexibility of our method.

Jiayi Su, Youhe Feng, Zheng Li, Jinhua Song, Yangfan He, Botao Ren, Botian Xu• 2024

Related benchmarks

TaskDatasetResultRank
3D Articulated Object GenerationPartNet-Mobility
POR2.761
9
Part-Decomposed Single-View Articulated Object GenerationPartNet-Mobility (test)
RS-gIoU1.3165
7
Single-View Articulated Object GenerationACD
RS dgIoU134.9
7
3D Articulated Object GenerationPartNet-Mobility
Geometric Score3.95
5
Articulated Object Generation (Part Retrieval Shape)PartNet-Mobility (test)
POR0.253
5
Text-Guided Object AlignmentText-Guided Object Alignment
CLIP-R@1021.98
4
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