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stať ve sborníku (D)
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Ústav pro výzkum a aplikace fuzzy modelování (94410)
Title:
3D Shapes Classification Using Intermediate Parts Representation
Citace
Hůla, J., Mojžíšek, D. a Adamczyk, D. 3D Shapes Classification Using Intermediate Parts Representation.
In:
Information Processing and Management of Uncertainty in Knowledge-Based Systems 2022-07-11 Milano.
Springer, 2022. s. 431-442. ISBN 978-3-031-08974-9.
Subtitle
Publication year:
2022
Obor:
Number of pages:
12
Page from:
431
Page to:
442
Form of publication:
Elektronická verze
ISBN code:
978-3-031-08974-9
ISSN code:
Proceedings title:
Information Processing and Management of Uncertainty in Knowledge-Based Systems
Proceedings:
Publisher name:
Springer
Place of publishing:
neuvedeno
Country of Publication:
Název konference:
Místo konání konference:
Milano
Datum zahájení konference:
Typ akce podle státní
příslušnosti účastníků:
Celosvětová akce
WoS code:
EID:
2-s2.0-85135055236
Key words in English:
Geometry processing, Graph neural networks, Co-segmentation, Shape classification
Annotation in original language:
We describe a novel approach for 3D shape classification which classifies the shape based on a graph of its parts. To segment out the parts of a given object, we train a shape segmentation network to mimic the segments obtained from an offline co-segmentation method. Using the predicted segments, our approach constructs a spatial graph of the parts which reflects the spatial relations between them. The graph of parts is finally classified by a Tensor Field Network - a type of a graph neural network which is designed to be equivariant to rotations and translations. Therefore, the classification of the spatial graph of parts is not influenced by the choice of the coordinate frame. We also introduce a data augmentation method which is particularly suitable to our setting. A preliminary experimental results show that our method is competitive with the standard approach which does not detect parts as an intermediate step. The intermediate representation of parts makes the whole model more interpretable.
Annotation in english language:
References
Reference
R01:
RIV/61988987:17610/22:A2302G4C
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