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Chowdhury et al., 2020 - Google Patents

Non-blind and blind deconvolution under poisson noise using fractional-order total variation

Chowdhury et al., 2020

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Document ID
2709896980466190709
Author
Chowdhury M
Qin J
Lou Y
Publication year
Publication venue
Journal of Mathematical Imaging and Vision

External Links

Snippet

In a wide range of applications such as astronomy, biology, and medical imaging, acquired data are usually corrupted by Poisson noise and blurring artifacts. Poisson noise often occurs when photon counting is involved in such imaging modalities as X-ray, positron …
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Classifications

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