A Real-time Scale-robust Network for Glottis Segmentation in Nasal Transnasal Intubation
arXiv cs.CV / 5/1/2026
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Key Points
- The paper introduces a lightweight, scale-robust glottis segmentation framework aimed at improving machine-assisted nasotracheal (nasal transnasal) intubation by handling difficult anatomy, illumination, and glottis scale changes.
- It builds robustness to glottis scale variability using a multi-receptive-field feature extraction module, then stacks this module into the network’s backbone and neck.
- The authors further enhance accuracy in complex clinical conditions by using an advanced label assignment strategy and redefining the sampling scheme to reduce intra-class differences.
- Experiments on three datasets show the method outperforms prior approaches, reaching 92.9% mDice with a compact 19 MB model and over 170 FPS inference speed.
- The authors state that code and datasets will be open-sourced on GitHub, and they provide a repository link for GlottisNet.
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