Deeply coded aperture for lensless imaging

In this Letter, we present a method for jointly designing a coded aperture and a convolutional neural network for reconstructing an object from a single-shot lensless measurement. The coded aperture and the reconstruction network are connected with a deep learning framework in which the coded apertu...

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Veröffentlicht in:Optics letters 2020-06, Vol.45 (11), p.3131-3134
Hauptverfasser: Horisaki, Ryoichi, Okamoto, Yuka, Tanida, Jun
Format: Artikel
Sprache:eng
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Zusammenfassung:In this Letter, we present a method for jointly designing a coded aperture and a convolutional neural network for reconstructing an object from a single-shot lensless measurement. The coded aperture and the reconstruction network are connected with a deep learning framework in which the coded aperture is placed as a first convolutional layer. Our co-optimization method was experimentally demonstrated with a fully convolutional network, and its performance was compared to a coded aperture with a modified uniformly redundant array.
ISSN:0146-9592
1539-4794
DOI:10.1364/OL.390810