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ConceptPose: Training-Free Zero-Shot Object Pose Estimation Using Concept Vectors

MCML Authors

Abstract

Object pose estimation is a fundamental task in computer vision and robotics, yet most methods require extensive, dataset-specific training. Concurrently, large-scale vision language models show remarkable zero-shot capabilities. In this work, we bridge these two worlds by introducing ConceptPose, a framework for object pose estimation that is both training-free and model-free. ConceptPose leverages a vision-language-model (VLM) to create open-vocabulary 3D concept maps, where each point is tagged with a concept vector derived from saliency maps. By establishing robust 3D-3D correspondences across concept maps, our approach allows precise estimation of 6DoF relative pose. Without any object or dataset-specific training, our approach achieves state-of-the-art results on common zero shot relative pose estimation benchmarks, significantly outperforming existing methods by over 62% in ADD(-S) score, including those that utilize extensive dataset-specific training.

misc KVS+25


Preprint

Dec. 2025

Authors

L. Kuang • Y. Velikova • M. Saleh • J.-N. Zaech • D. P. Paudel • B. Busam

Links

arXiv

Research Areas

 B1 | Computer Vision

 C1 | Medicine

BibTeXKey: KVS+25

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