Photogrammetry and Remote Sensing Lab of ETH Zurich

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toshas  updated a model 7 days ago
prs-eth/marigold-normals-lcm-v0-1
toshas  updated a model 7 days ago
prs-eth/marigold-normals-v0-1
toshas  updated a model 7 days ago
prs-eth/marigold-depth-v1-0
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toshas 
in prs-eth/marigold-lcm 13 days ago

why delete this demo ?

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#4 opened 18 days ago by
wwdok
toshas 
posted an update 3 months ago
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Introducing ⇆ Marigold-DC — our training-free zero-shot approach to monocular Depth Completion with guided diffusion! If you have ever wondered how else a long denoising diffusion schedule can be useful, we have an answer for you!

Depth Completion addresses sparse, incomplete, or noisy measurements from photogrammetry or sensors like LiDAR. Sparse points aren’t just hard for humans to interpret — they also hinder downstream tasks.

Traditionally, depth completion was framed as image-guided depth interpolation. We leverage Marigold, a diffusion-based monodepth model, to reframe it as sparse-depth-guided depth generation. How the turntables! Check out the paper anyway 👇

🌎 Website: https://marigolddepthcompletion.github.io/
🤗 Demo: prs-eth/marigold-dc
📕 Paper: https://arxiv.org/abs/2412.13389
👾 Code: https://github.com/prs-eth/marigold-dc

Team ETH Zürich: Massimiliano Viola ( @mviola ), Kevin Qu ( @KevinQu7 ), Nando Metzger ( @nandometzger ), Bingxin Ke ( @Bingxin ), Alexander Becker, Konrad Schindler, and Anton Obukhov ( @toshas ). We thank
Hugging Face for their continuous support.