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[Crossref]

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[Crossref]

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J. Duan, W. Lu, C. Tench, I. Gottlob, F. Proudlock, and et al., “Denoising optical coherence tomography using second order total generalized variation decomposition,” Biomed. Signal Process. Control 24, 120–127 (2016).

[Crossref]

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[Crossref]

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