English

PASR: Pose-Aware 3D Shape Retrieval from Occluded Single Views

Computer Vision and Pattern Recognition 2026-04-30 v2

Abstract

Single-view 3D shape retrieval is a fundamental yet challenging task that is increasingly important with the growth of available 3D data. Existing approaches largely fall into two categories: those using contrastive learning to map point cloud features into existing vision-language spaces and those that learn a common embedding space for 2D images and 3D shapes. However, these feed-forward, holistic alignments are often difficult to interpret, which in turn limits their robustness and generalization to real-world applications. To address this problem, we propose Pose-Aware 3D Shape Retrieval (PASR), a framework that formulates retrieval as a feature-level analysis-by-synthesis problem by distilling knowledge from a 2D foundation model (DINOv3) into a 3D encoder. By aligning pose-conditioned 3D projections with 2D feature maps, our method bridges the gap between real-world images and synthetic meshes. During inference, PASR performs a test-time optimization via analysis-by-synthesis, jointly searching for the shape and pose that best reconstruct the patch-level feature map of the input image. This synthesis-based optimization is inherently robust to partial occlusion and sensitive to fine-grained geometric details. PASR substantially outperforms existing methods on both clean and occluded 3D shape retrieval datasets by a wide margin. Additionally, PASR demonstrates strong multi-task capabilities, achieving robust shape retrieval, competitive pose estimation, and accurate category classification within a single framework.

Keywords

Cite

@article{arxiv.2604.22658,
  title  = {PASR: Pose-Aware 3D Shape Retrieval from Occluded Single Views},
  author = {Jiaxin Shi and Guofeng Zhang and Wufei Ma and Naifu Liang and Adam Kortylewski and Alan Yuille},
  journal= {arXiv preprint arXiv:2604.22658},
  year   = {2026}
}
R2 v1 2026-07-01T12:33:59.742Z