single-view-3d

๐Ÿ“š ICML 2024 - Single-view 3D Reconstruction Paper List

๐Ÿ“„ Paper List


1. IM-3D: Iterative Multiview Diffusion and Reconstruction for High-Quality 3D Generation

Authors: Luke Melas-Kyriazi, Iro Laina, Christian Rupprecht, Natalia Neverova, Andrea Vedaldi, Oran Gafni, Filippos Kokkinos
Affiliations: University of Oxford, Meta AI:contentReference[oaicite:9]{index=9}

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๐Ÿ” Keywords: :contentReference[oaicite:18]{index=18}
๐Ÿ—‚๏ธ Dataset: :contentReference[oaicite:21]{index=21}:contentReference[oaicite:23]{index=23}


2. VistaDream: Sampling Multiview Consistent Images for Single-View 3D Scene Reconstruction

Authors: :contentReference[oaicite:25]{index=25}
Affiliations: :contentReference[oaicite:28]{index=28}:contentReference[oaicite:30]{index=30}

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๐Ÿ” Keywords: :contentReference[oaicite:39]{index=39}
๐Ÿ—‚๏ธ Dataset: :contentReference[oaicite:42]{index=42}:contentReference[oaicite:44]{index=44}


3. S3O: A Dual-Phase Approach for Reconstructing Dynamic Shape and Skeleton of Articulated Objects from Single Monocular Video

Authors: :contentReference[oaicite:46]{index=46}
Affiliations: :contentReference[oaicite:49]{index=49}:contentReference[oaicite:51]{index=51}

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๐Ÿ”— Resources

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๐Ÿ” Keywords: :contentReference[oaicite:60]{index=60}
๐Ÿ—‚๏ธ Dataset: :contentReference[oaicite:63]{index=63}:contentReference[oaicite:65]{index=65}


4. Robust Inverse Graphics via Probabilistic Inference

Authors: :contentReference[oaicite:67]{index=67}
Affiliations: :contentReference[oaicite:70]{index=70}:contentReference[oaicite:72]{index=72}

Highlights:

๐Ÿ”— Resources

๐Ÿ“„ Paper PDF

๐Ÿ” Keywords: :contentReference[oaicite:81]{index=81}
๐Ÿ—‚๏ธ Dataset: :contentReference[oaicite:84]{index=84}:contentReference[oaicite:86]{index=86}


่ฏทๆณจๆ„๏ผš็”ฑไบŽ็›ฎๅ‰ ICML 2024 ็š„ๅฎŒๆ•ด่ฎบๆ–‡ๅˆ—่กจๅฐšๆœชๅ…ฌๅผ€๏ผŒไปฅไธŠไป…ไธบ้ƒจๅˆ†ๅทฒ็Ÿฅ็š„ไปฃ่กจๆ€ง่ฎบๆ–‡ใ€‚ๅปบ่ฎฎๆ‚จๅฎšๆœŸ่ฎฟ้—ฎ ICML 2024 ๅฎ˜ๆ–น็ฝ‘็ซ™ ไปฅ่Žทๅ–ๆœ€ๆ–ฐ็š„่ฎบๆ–‡ไฟกๆฏๅ’Œ่ต„ๆบใ€‚