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Multimodal Shape Completion via Conditional Generative Adversarial Networks

About

Several deep learning methods have been proposed for completing partial data from shape acquisition setups, i.e., filling the regions that were missing in the shape. These methods, however, only complete the partial shape with a single output, ignoring the ambiguity when reasoning the missing geometry. Hence, we pose a multi-modal shape completion problem, in which we seek to complete the partial shape with multiple outputs by learning a one-to-many mapping. We develop the first multimodal shape completion method that completes the partial shape via conditional generative modeling, without requiring paired training data. Our approach distills the ambiguity by conditioning the completion on a learned multimodal distribution of possible results. We extensively evaluate the approach on several datasets that contain varying forms of shape incompleteness, and compare among several baseline methods and variants of our methods qualitatively and quantitatively, demonstrating the merit of our method in completing partial shapes with both diversity and quality.

Rundi Wu, Xuelin Chen, Yixin Zhuang, Baoquan Chen• 2020

Related benchmarks

TaskDatasetResultRank
3D Mesh Similarity Metric CorrelationShape Grading
PLCC0.55
117
3D Mesh Quality AssessmentShape Grading 1.0 (test)
SROCC (Object 1)0.38
9
Correlation AnalysisShape Grading
KROCC (Object 1)0.27
9
3D Shape CompletionPartNet
TMD (Avg)2.94
8
Shape completionShapeNet High Scan Ambiguity
Chamfer Distance3.49
8
Shape completionShapeNet Low Scan Ambiguity
CD1.33
8
Shape completionShapeNet v1 (test)
UHD0.0579
6
Multimodal 3D Shape Completion3D-EPN v1 (test)
TMD (Chair)2.24
5
Shape completionPartNet
MMD (Chair)1.52
5
Point Cloud CompletionRedwood 10 objects
Chamfer Loss (old chair)33.2
5
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