Deconvolution of Sub-pixeled Richardson-Lucy Algorithm
نویسنده
چکیده
We introduce a Modiied Richardson-Lucy Algorithm for reducing data from the Subaru AO system. This new algorithm applies Magain's correct sampling approach to the Classical Richardson-Lucy algorithm. We have evaluated its performance for astronomical usage, appearance of the object and photometric accuracy, and compared our results to those obtained with a Classical Richardson-Lucy Algorithm.
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