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Extrapolated speckle-correlation imaging with untrained deep neural network

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posted on 2023-06-06, 09:53 authored by Ryosuke Mashiko, Jun Tanida, Makoto Naruse, Ryoichi Horisaki
We present a method for speckle-correlation imaging with an extended field of view to observe non-sparse objects. In speckle-correlation imaging, an object is recovered from a non-invasively captured image through a scattering medium by assuming shift-invariance of the optical process called the memory effect. The field of view of speckle-correlation imaging is limited by the size of the memory effect, and it can be extended by extrapolating the speckle correlation in the reconstruction process. However, sparse objects are assumed in the inversion process because of its severe ill-posedness. To address this issue, we introduce a deep image prior, which regularizes the image statistics by using the structure of an untrained convolutional neural network, to speckle-correlation imaging. We experimentally demonstrated the proposed method and showed the possibility of extending the method to imaging through scattering media.

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Funder Name

Japan Society for the Promotion of Science (JP20H02657,JP20K05361,JP20H05890,JP23H01874)

Preprint ID

107119

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