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Learning to Generate 3D Shapes from a Single Example

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Existing generative models for 3D shapes are typically trained on a large 3D dataset, often of a specific object category. In this paper, we investigate the deep generative model that learns from only a single reference 3D shape. Specifically, we present a multi-scale GAN-based model designed to capture the input shape's geometric features across a range of spatial scales. To avoid large memory and computational cost induced by operating on the 3D volume, we build our generator atop the tri-plane hybrid representation, which requires only 2D convolutions. We train our generative model on a voxel pyramid of the reference shape, without the need of any external supervision or manual annotation. Once trained, our model can generate diverse and high-quality 3D shapes possibly of different sizes and aspect ratios. The resulting shapes present variations across different scales, and at the same time retain the global structure of the reference shape. Through extensive evaluation, both qualitative and quantitative, we demonstrate that our model can generate 3D shapes of various types.

Rundi Wu, Changxi Zheng• 2022

Related benchmarks

TaskDatasetResultRank
3D Mesh Similarity Metric CorrelationShape Grading
PLCC0.74
117
3D Mesh Quality AssessmentShape Grading 1.0 (test)
SROCC (Object 1)0.63
9
Correlation AnalysisShape Grading
KROCC (Object 1)0.48
9
3D Shape Generation3D Shapes Single-Exemplar
Encoding/Training Time4
4
Exemplar-based 3D GenerationHouse
SS-FID0.91
2
Exemplar-based 3D Generationacropolis
SS-FID2.81
2
Exemplar-based 3D Generationsmall-town
SS-FID1.71
2
Exemplar-based 3D Generationwood
SS-FID0.07
2
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