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Improvement of the image quality of random phase--free holography using an iterative method

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 نشر من قبل Tomoyoshi Shimobaba Dr.
 تاريخ النشر 2015
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Our proposed method of random phase-free holography using virtual convergence light can obtain large reconstructed images exceeding the size of the hologram, without the assistance of random phase. The reconstructed images have low-speckle noise in the amplitude and phase-only holograms (kinoforms); however, in low-resolution holograms, we obtain a degraded image quality compared to the original image. We propose an iterative random phase-free method with virtual convergence light to address this problem.



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