Harnessing Foundation Models for Robust and Generalizable 6-DOF Bronchoscopy Localization
Journal:
arXiv
Published Date:
May 30, 2025
Abstract
Vision-based 6-DOF bronchoscopy localization offers a promising solution for
accurate and cost-effective interventional guidance. However, existing methods
struggle with 1) limited generalization across patient cases due to scarce
labeled data, and 2) poor robustness under visual degradation, as bronchoscopy
procedures frequently involve artifacts such as occlusions and motion blur that
impair visual information. To address these challenges, we propose PANSv2, a
generalizable and robust bronchoscopy localization framework. Motivated by PANS
that leverages multiple visual cues for pose likelihood measurement, PANSv2
integrates depth estimation, landmark detection, and centerline constraints
into a unified pose optimization framework that evaluates pose probability and
solves for the optimal bronchoscope pose. To further enhance generalization
capabilities, we leverage the endoscopic foundation model EndoOmni for depth
estimation and the video foundation model EndoMamba for landmark detection,
incorporating both spatial and temporal analyses. Pretrained on diverse
endoscopic datasets, these models provide stable and transferable visual
representations, enabling reliable performance across varied bronchoscopy
scenarios. Additionally, to improve robustness to visual degradation, we
introduce an automatic re-initialization module that detects tracking failures
and re-establishes pose using landmark detections once clear views are
available. Experimental results on bronchoscopy dataset encompassing 10 patient
cases show that PANSv2 achieves the highest tracking success rate, with an
18.1% improvement in SR-5 (percentage of absolute trajectory error under 5 mm)
compared to existing methods, showing potential towards real clinical usage.