Math @ Duke
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Publications [#235764] of Robert Calderbank
Papers Published
- Xie, Y; Chi, Y; Calderbank, R, Low-rank matrix recovery with poison noise,
2013 IEEE Global Conference on Signal and Information Processing, GlobalSIP 2013 - Proceedings
(December, 2013),
pp. 622, IEEE [doi]
(last updated on 2025/02/21)
Abstract: Estimating an image M* +m1×m2 from its linear measurements under Poisson noise is an important problem arises from applications such as optical imaging, nuclear medicine and x-ray imaging [1]. When the image M* has a low-rank structure, we can use a small number of linear measurements to recover M*, also known as low-rank matrix recovery. This is related to compressed sensing, where the goal is to develop efficient data acquisition systems by exploiting sparsity of underlying signals. © 2013 IEEE.
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