Test-time augmentation with synthetic data addresses distribution shifts in spectral imaging

Ahmad Bin Qasim, Alessandro Motta,Alexander Studier-Fischer,Jan Sellner,Leonardo Ayala, Marco Hübner, Marc Bressan, Berkin Özdemir, Karl Friedrich Kowalewski,Felix Nickel,Silvia Seidlitz,Lena Maier-Hein

International Journal of Computer Assisted Radiology and Surgery(2024)

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摘要
Surgical scene segmentation is crucial for providing context-aware surgical assistance. Recent studies highlight the significant advantages of hyperspectral imaging (HSI) over traditional RGB data in enhancing segmentation performance. Nevertheless, the current hyperspectral imaging (HSI) datasets remain limited and do not capture the full range of tissue variations encountered clinically. Based on a total of 615 hyperspectral images from a total of 16 pigs, featuring porcine organs in different perfusion states, we carry out an exploration of distribution shifts in spectral imaging caused by perfusion alterations. We further introduce a novel strategy to mitigate such distribution shifts, utilizing synthetic data for test-time augmentation. The effect of perfusion changes on state-of-the-art (SOA) segmentation networks depended on the organ and the specific perfusion alteration induced. In the case of the kidney, we observed a performance decline of up to 93
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关键词
Hyperspectral imaging,Deep learning,Surgical scene segmentation,Tissue classification,Domain generalization,Test-time augmentation
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