CUPID: Pose-Grounded Generative 3D Reconstruction from a Single Image
- URL: http://arxiv.org/abs/2510.20776v1
- Date: Thu, 23 Oct 2025 17:47:38 GMT
- Title: CUPID: Pose-Grounded Generative 3D Reconstruction from a Single Image
- Authors: Binbin Huang, Haobin Duan, Yiqun Zhao, Zibo Zhao, Yi Ma, Shenghua Gao,
- Abstract summary: A new generation-based 3D reconstruction method, named Cupid, infers the camera pose, 3D shape, and texture of an object from a single 2D image.<n>Experiments demonstrate Cupid outperforms leading 3D reconstruction methods with an over 3 dB PSNR gain and an over 10% Chamfer Distance reduction.
- Score: 32.39661961097445
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This work proposes a new generation-based 3D reconstruction method, named Cupid, that accurately infers the camera pose, 3D shape, and texture of an object from a single 2D image. Cupid casts 3D reconstruction as a conditional sampling process from a learned distribution of 3D objects, and it jointly generates voxels and pixel-voxel correspondences, enabling robust pose and shape estimation under a unified generative framework. By representing both input camera poses and 3D shape as a distribution in a shared 3D latent space, Cupid adopts a two-stage flow matching pipeline: (1) a coarse stage that produces initial 3D geometry with associated 2D projections for pose recovery; and (2) a refinement stage that integrates pose-aligned image features to enhance structural fidelity and appearance details. Extensive experiments demonstrate Cupid outperforms leading 3D reconstruction methods with an over 3 dB PSNR gain and an over 10% Chamfer Distance reduction, while matching monocular estimators on pose accuracy and delivering superior visual fidelity over baseline 3D generative models. For an immersive view of the 3D results generated by Cupid, please visit cupid3d.github.io.
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