Learning Hierarchical Shape Segmentation and Labeling from Online Repositories
May 04, 2017 Β· Declared Dead Β· π ACM Transactions on Graphics
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Authors
Li Yi, Leonidas Guibas, Aaron Hertzmann, Vladimir G. Kim, Hao Su, Ersin Yumer
arXiv ID
1705.01661
Category
cs.GR: Graphics
Citations
54
Venue
ACM Transactions on Graphics
Last Checked
3 months ago
Abstract
We propose a method for converting geometric shapes into hierarchically segmented parts with part labels. Our key idea is to train category-specific models from the scene graphs and part names that accompany 3D shapes in public repositories. These freely-available annotations represent an enormous, untapped source of information on geometry. However, because the models and corresponding scene graphs are created by a wide range of modelers with different levels of expertise, modeling tools, and objectives, these models have very inconsistent segmentations and hierarchies with sparse and noisy textual tags. Our method involves two analysis steps. First, we perform a joint optimization to simultaneously cluster and label parts in the database while also inferring a canonical tag dictionary and part hierarchy. We then use this labeled data to train a method for hierarchical segmentation and labeling of new 3D shapes. We demonstrate that our method can mine complex information, detecting hierarchies in man-made objects and their constituent parts, obtaining finer scale details than existing alternatives. We also show that, by performing domain transfer using a few supervised examples, our technique outperforms fully-supervised techniques that require hundreds of manually-labeled models.
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