Affiliation:
1. Institute of Electrical and Micro Engineering
2. Foundation for Research and Technology-Hellas (FORTH)
Abstract
Ptychography has become a popular computational imaging method for
microscopy in recent years. In the present work we employ a wavelength
scanning ptychography technique enhanced by neural networks for
imaging with a fiber endoscope. Illumination of the object at various
wavelengths is achieved using a single mode fiber, while a multicore
fiber collects diffracted light from a distance. Using a U-Net
multilayer convolutional neural network, the diffraction pattern is
recovered at the far end of the multicore fiber from the recorded
intensity pattern at the proximal end. With the recovered diffraction
pattern in place, the phase object can be reconstructed using the
ptychography algorithm. The quality of the object reconstruction
improves with the number of wavelengths used. Comparison with an
end-to-end neural network highlights the effectiveness and
practicality of this two-step hybrid system. This alternative and
simplified ptychographic endoscopy setup delivers noticeable
improvements through neural networks and wavelength scanning.
Funder
European Research Council
Stavros Niarchos
Foundation
Hellenic Foundation for Research and
Innovation