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Landmark Detection using Transformer Toward Robot-assisted Nasal Airway Intubation

Authors :
Liu, Tianhang
Li, Hechen
Bai, Long
Wu, Yanan
Wang, An
Islam, Mobarakol
Ren, Hongliang
Publication Year :
2023

Abstract

Robot-assisted airway intubation application needs high accuracy in locating targets and organs. Two vital landmarks, nostrils and glottis, can be detected during the intubation to accommodate the stages of nasal intubation. Automated landmark detection can provide accurate localization and quantitative evaluation. The Detection Transformer (DeTR) leads object detectors to a new paradigm with long-range dependence. However, current DeTR requires long iterations to converge, and does not perform well in detecting small objects. This paper proposes a transformer-based landmark detection solution with deformable DeTR and the semantic-aligned-matching module for detecting landmarks in robot-assisted intubation. The semantics aligner can effectively align the semantics of object queries and image features in the same embedding space using the most discriminative features. To evaluate the performance of our solution, we utilize a publicly accessible glottis dataset and automatically annotate a nostril detection dataset. The experimental results demonstrate our competitive performance in detection accuracy. Our code is publicly accessible.<br />Comment: ICBIR 2023 (Best Student Paper Award). Code availability: https://github.com/ConorLTH/airway_intubation_landmarks_detection

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.02845
Document Type :
Working Paper