RobustSurg: Tackling domain generalisation for out-of-distribution surgical scene segmentation
Mansoor Ali, Maksim Richards, Gilberto Ochoa-Ruiz, Sharib Ali

TL;DR
RobustSurg introduces a novel approach for surgical scene segmentation that enhances out-of-distribution generalisation by exploiting style-content features and a restitution module, validated on newly curated datasets.
Contribution
The paper proposes a style-content feature exploitation method with a restitution module for robust surgical scene segmentation and provides a new dataset for generalisability research.
Findings
23% improvement over baseline DeepLabv3+ on unseen centre data
22% improvement over baseline on polyp dataset
Significant generalisation gains on multiple surgical datasets
Abstract
While recent advances in deep learning for surgical scene segmentation have demonstrated promising results on single-centre and single-imaging modality data, these methods usually do not generalise to unseen distribution (i.e., from other centres) and unseen modalities. Current literature for tackling generalisation on out-of-distribution data and domain gaps due to modality changes has been widely researched but mostly for natural scene data. However, these methods cannot be directly applied to the surgical scenes due to limited visual cues and often extremely diverse scenarios compared to the natural scene data. Inspired by these works in natural scenes to push generalisability on OOD data, we hypothesise that exploiting the style and content information in the surgical scenes could minimise the appearances, making it less variable to sudden changes such as blood or imaging artefacts.…
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Taxonomy
TopicsSurgical Simulation and Training · Domain Adaptation and Few-Shot Learning · Advanced Neural Network Applications
