arXiv Open Access 2026

Training-free Detection and 6D Pose Estimation of Unseen Surgical Instruments

Jonas Hein Lilian Calvet Matthias Seibold Siyu Tang Marc Pollefeys +1 lainnya
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Abstrak

Purpose: Accurate detection and 6D pose estimation of surgical instruments are crucial for many computer-assisted interventions. However, supervised methods lack flexibility for new or unseen tools and require extensive annotated data. This work introduces a training-free pipeline for accurate multi-view 6D pose estimation of unseen surgical instruments, which only requires a textured CAD model as prior knowledge. Methods: Our pipeline consists of two main stages. First, for detection, we generate object mask proposals in each view and score their similarity to rendered templates using a pre-trained feature extractor. Detections are matched across views, triangulated into 3D instance candidates, and filtered using multi-view geometric consistency. Second, for pose estimation, a set of pose hypotheses is iteratively refined and scored using feature-metric scores with cross-view attention. The best hypothesis undergoes a final refinement using a novel multi-view, occlusion-aware contour registration, which minimizes reprojection errors of unoccluded contour points. Results: The proposed method was rigorously evaluated on real-world surgical data from the MVPSP dataset. The method achieves millimeter-accurate pose estimates that are on par with supervised methods under controlled conditions, while maintaining full generalization to unseen instruments. These results demonstrate the feasibility of training-free, marker-less detection and tracking in surgical scenes, and highlight the unique challenges in surgical environments. Conclusion: We present a novel and flexible pipeline that effectively combines state-of-the-art foundational models, multi-view geometry, and contour-based refinement for high-accuracy 6D pose estimation of surgical instruments without task-specific training. This approach enables robust instrument tracking and scene understanding in dynamic clinical environments.

Topik & Kata Kunci

Penulis (6)

J

Jonas Hein

L

Lilian Calvet

M

Matthias Seibold

S

Siyu Tang

M

Marc Pollefeys

P

Philipp Fürnstahl

Format Sitasi

Hein, J., Calvet, L., Seibold, M., Tang, S., Pollefeys, M., Fürnstahl, P. (2026). Training-free Detection and 6D Pose Estimation of Unseen Surgical Instruments. https://arxiv.org/abs/2603.25228

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Tahun Terbit
2026
Bahasa
en
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arXiv
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Open Access ✓