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Learned denoising with simulated and experimental low-dose CT data
Paper Details
Published: 2024/08/15
DOI: 10.48550/arXiv.2408.08115
ARXIV ID: 2408.08115v1
This paper analyses what happens when artificial noise is added to experimental data at the same level of real noise, and cross-compare AI methos trained in each. The authors showcase that even the most sophisticated of the “fast” X-ray noise simulators do not capture the complexity of real noise, and thus any model trained with such simulated noise may not generalize to real data.
Authors
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M.B. Kiss
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C.B. Schonlieb
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K.J. Batenburg
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