IVCVOct 15, 2024

From Real Artifacts to Virtual Reference: A Robust Framework for Translating Endoscopic Images

arXiv:2410.13896v3h-index: 17
Originality Incremental advance
AI Analysis

This addresses a domain adaptation challenge in medical imaging for endoscopic surgery, offering incremental improvements for surgical planning and navigation.

The paper tackles the problem of aligning noisy endoscopic videos with clean virtual images for surgical guidance by proposing an artifact-resilient image translation method, resulting in significantly improved performance over state-of-the-art methods on clinical datasets.

Domain adaptation, which bridges the distributions across different modalities, plays a crucial role in multimodal medical image analysis. In endoscopic imaging, combining pre-operative data with intra-operative imaging is important for surgical planning and navigation. However, existing domain adaptation methods are hampered by distribution shift caused by in vivo artifacts, necessitating robust techniques for aligning noisy and artifact abundant patient endoscopic videos with clean virtual images reconstructed from pre-operative tomographic data for pose estimation during intraoperative guidance. This paper presents an artifact-resilient image translation method and an associated benchmark for this purpose. The method incorporates a novel ``local-global'' translation framework and a noise-resilient feature extraction strategy. For the former, it decouples the image translation process into a local step for feature denoising, and a global step for global style transfer. For feature extraction, a new contrastive learning strategy is proposed, which can extract noise-resilient features for establishing robust correspondence across domains. Detailed validation on both public and in-house clinical datasets has been conducted, demonstrating significantly improved performance compared to the current state-of-the-art.

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