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Main Authors: Qu, Wentian, Meng, Chenyu, Li, Heng, Cheng, Jian, Ma, Cuixia, Wang, Hongan, Zhou, Xiao, Deng, Xiaoming, Tan, Ping
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.02831
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author Qu, Wentian
Meng, Chenyu
Li, Heng
Cheng, Jian
Ma, Cuixia
Wang, Hongan
Zhou, Xiao
Deng, Xiaoming
Tan, Ping
author_facet Qu, Wentian
Meng, Chenyu
Li, Heng
Cheng, Jian
Ma, Cuixia
Wang, Hongan
Zhou, Xiao
Deng, Xiaoming
Tan, Ping
contents Object pose estimation, crucial in computer vision and robotics applications, faces challenges with the diversity of unseen categories. We propose a zero-shot method to achieve category-level 6-DOF object pose estimation, which exploits both 2D and 3D universal features of input RGB-D image to establish semantic similarity-based correspondences and can be extended to unseen categories without additional model fine-tuning. Our method begins with combining efficient 2D universal features to find sparse correspondences between intra-category objects and gets initial coarse pose. To handle the correspondence degradation of 2D universal features if the pose deviates much from the target pose, we use an iterative strategy to optimize the pose. Subsequently, to resolve pose ambiguities due to shape differences between intra-category objects, the coarse pose is refined by optimizing with dense alignment constraint of 3D universal features. Our method outperforms previous methods on the REAL275 and Wild6D benchmarks for unseen categories.
format Preprint
id arxiv_https___arxiv_org_abs_2501_02831
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Universal Features Guided Zero-Shot Category-Level Object Pose Estimation
Qu, Wentian
Meng, Chenyu
Li, Heng
Cheng, Jian
Ma, Cuixia
Wang, Hongan
Zhou, Xiao
Deng, Xiaoming
Tan, Ping
Computer Vision and Pattern Recognition
Object pose estimation, crucial in computer vision and robotics applications, faces challenges with the diversity of unseen categories. We propose a zero-shot method to achieve category-level 6-DOF object pose estimation, which exploits both 2D and 3D universal features of input RGB-D image to establish semantic similarity-based correspondences and can be extended to unseen categories without additional model fine-tuning. Our method begins with combining efficient 2D universal features to find sparse correspondences between intra-category objects and gets initial coarse pose. To handle the correspondence degradation of 2D universal features if the pose deviates much from the target pose, we use an iterative strategy to optimize the pose. Subsequently, to resolve pose ambiguities due to shape differences between intra-category objects, the coarse pose is refined by optimizing with dense alignment constraint of 3D universal features. Our method outperforms previous methods on the REAL275 and Wild6D benchmarks for unseen categories.
title Universal Features Guided Zero-Shot Category-Level Object Pose Estimation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2501.02831