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🚀Excited to release PartField—a feedforward model that learns part-based feature fields for 3D shapes! It enables lightning-fast⚡️, robust, open-world hierarchical 3D part seg and unlocks cross-shape applications like co-seg and correspondence! 🔗 1/n

17,136 views • 1 year ago •via X (Twitter)

9 Comments

Minghua Liu's profile picture
Minghua Liu1 year ago

3D part seg remains an open challenge in computer vision. Recent open-world methods distill 2D priors via per-shape optimization but suffer from lengthy runtimes and noisy results. PartField is a feedforward model that delivers lightning-fast speed and robust performance. 2/n

Minghua Liu's profile picture
Minghua Liu1 year ago

Instead of relying on text prompts, PartField converts any 3D shape into a feature field that captures the general concept of 3D parts. It then decomposes the shape into hierarchical, multi-granularity parts by applying a clustering algorithm to the field. 3/n

Minghua Liu's profile picture
Minghua Liu1 year ago

We train PartField at scale with contrastive learning on both 2D data (distilled masks) and 3D supervision (when available). It showcases strong open-world capabilities across diverse categories, 3D modalities (meshes, Gaussians), and shape styles (artistic, Gen AI, CAD). 4/n

Minghua Liu's profile picture
Minghua Liu1 year ago

Instead of recognizing a single part or producing a fixed-granularity clustering, PartField implicitly learns a hierarchy of multi-scale parts and outputs a part tree. Users can interactively choose branches to decompose further based on their desired granularity. 5/n

Minghua Liu's profile picture
Minghua Liu1 year ago

Another interesting point is that, while we do not explicitly incorporate any cross-shape supervision, consistency surprisingly emerges in the learned feature space across different shapes. The figure visualizes similarities across the field relative to a selected location. 6/n

Minghua Liu's profile picture
Minghua Liu1 year ago

This emergent consistency enables various cross-shape applications, such as shape co-segmentation and correspondence, and demonstrates that PartField learns open-world, general-purpose, hierarchical, and consistent 3D feature fields. 7/n

Minghua Liu's profile picture
Minghua Liu1 year ago

Check out our project page, released code, and checkpoints! 🔗 Many thanks to our amazing collaborators: @mikacuy, @DonglaiXiang , @haosu_twitr , @FidlerSanja , @nmwsharp and @JunGao33210520! 8/n

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Coinage2 years ago

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Rawlala's profile picture
Rawlala1 year ago

Have u tried with ai genwrated mesh ? 😂

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