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Despoina Paschalidou - Neural Parts

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Manage episode 320124436 series 3300270
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PAPER TITLE
Neural Parts: Learning Expressive 3D Shape Abstractions with Invertible Neural Networks

AUTHORS

Despoina Paschalidou , Angelos Katharopoulos, Andreas Geiger, Sanja Fidler

ABSTRACT

Impressive progress in 3D shape extraction led to representations that can capture object geometries with high fidelity. In parallel, primitive-based methods seek to represent objects as semantically consistent part arrangements. However, due to the simplicity of existing primitive representations, these methods fail to accurately reconstruct 3D shapes using a small number of primitives/parts. We address the trade-off between reconstruction quality and number of parts with Neural Parts, a novel 3D primitive representation that defines primitives using an Invertible Neural Network (INN) which implements homeomorphic mappings between a sphere and the target object. The INN allows us to compute the inverse mapping of the homomorphism, which in turn, enables the efficient computation of both the implicit surface function of a primitive and its mesh, without any additional post-processing. Our model learns to parse 3D objects into semantically consistent part arrangements without any part-level supervision. Evaluations on ShapeNet, D-FAUST and FreiHAND demonstrate that our primitives can capture complex geometries and thus simultaneously achieve geometrically accurate as well as interpretable reconstructions using an order of magnitude fewer primitives than state-of-the-art shape abstraction methods.
RELATED PAPERS

📚 "KeypointDeformer: Unsupervised 3D Keypoint Discovery for Shape Control"

📚 "Learning Shape Abstractions by Assembling Volumetric Primitives": Volumetric primitives"

📚 "Superquadrics Revisited: Learning 3D Shape Parsing beyond Cuboids"

📚 "CvxNet: Learnable Convex Decomposition"
📚 "Neural Star Domain as Primitive Representation"

LINKS AND RESOURCES

💻 Project Page: https://paschalidoud.github.io/neural_parts

💻 CODE: https://github.com/paschalidoud/neural_parts

💻Blog Post

CONTACT

If you would like to be a guest, sponsor or just share your thoughts, feel free to reach out via email: talking.papers.podcast@gmail.com


SUBSCRIBE AND FOLLOW

🎧Subscribe on your favourite podcast app: https://talking.papers.podcast.itzikbs.com

🎧Subscribe on your favourite podcast app: https://talking.papers.podcast.itzikbs.com

📧Subscribe to our mailing list: http://eepurl.com/hRznqb

🐦Follow us on Twitter: https://twitter.com/talking_papers

🎥YouTube Channel: https://bit.ly/3eQOgwP

  continue reading

33 episodes

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Despoina Paschalidou - Neural Parts

Talking Papers Podcast

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iconPartager
 
Manage episode 320124436 series 3300270
Contenu fourni par Itzik Ben-Shabat. Tout le contenu du podcast, y compris les épisodes, les graphiques et les descriptions de podcast, est téléchargé et fourni directement par Itzik Ben-Shabat ou son partenaire de plateforme de podcast. Si vous pensez que quelqu'un utilise votre œuvre protégée sans votre autorisation, vous pouvez suivre le processus décrit ici https://fr.player.fm/legal.

PAPER TITLE
Neural Parts: Learning Expressive 3D Shape Abstractions with Invertible Neural Networks

AUTHORS

Despoina Paschalidou , Angelos Katharopoulos, Andreas Geiger, Sanja Fidler

ABSTRACT

Impressive progress in 3D shape extraction led to representations that can capture object geometries with high fidelity. In parallel, primitive-based methods seek to represent objects as semantically consistent part arrangements. However, due to the simplicity of existing primitive representations, these methods fail to accurately reconstruct 3D shapes using a small number of primitives/parts. We address the trade-off between reconstruction quality and number of parts with Neural Parts, a novel 3D primitive representation that defines primitives using an Invertible Neural Network (INN) which implements homeomorphic mappings between a sphere and the target object. The INN allows us to compute the inverse mapping of the homomorphism, which in turn, enables the efficient computation of both the implicit surface function of a primitive and its mesh, without any additional post-processing. Our model learns to parse 3D objects into semantically consistent part arrangements without any part-level supervision. Evaluations on ShapeNet, D-FAUST and FreiHAND demonstrate that our primitives can capture complex geometries and thus simultaneously achieve geometrically accurate as well as interpretable reconstructions using an order of magnitude fewer primitives than state-of-the-art shape abstraction methods.
RELATED PAPERS

📚 "KeypointDeformer: Unsupervised 3D Keypoint Discovery for Shape Control"

📚 "Learning Shape Abstractions by Assembling Volumetric Primitives": Volumetric primitives"

📚 "Superquadrics Revisited: Learning 3D Shape Parsing beyond Cuboids"

📚 "CvxNet: Learnable Convex Decomposition"
📚 "Neural Star Domain as Primitive Representation"

LINKS AND RESOURCES

💻 Project Page: https://paschalidoud.github.io/neural_parts

💻 CODE: https://github.com/paschalidoud/neural_parts

💻Blog Post

CONTACT

If you would like to be a guest, sponsor or just share your thoughts, feel free to reach out via email: talking.papers.podcast@gmail.com


SUBSCRIBE AND FOLLOW

🎧Subscribe on your favourite podcast app: https://talking.papers.podcast.itzikbs.com

🎧Subscribe on your favourite podcast app: https://talking.papers.podcast.itzikbs.com

📧Subscribe to our mailing list: http://eepurl.com/hRznqb

🐦Follow us on Twitter: https://twitter.com/talking_papers

🎥YouTube Channel: https://bit.ly/3eQOgwP

  continue reading

33 episodes

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