Litcius/Paper detail

Dual-constrained physics-enhanced untrained neural network for lensless imaging

Zehua Wang, Shenghao Zheng, Zhihui Ding, Cheng Guo

2023Journal of the Optical Society of America A13 citationsDOI

Abstract

An untrained neural network (UNN) paves a new way to realize lensless imaging from single-frame intensity data. Based on the physics engine, such methods utilize the smoothness property of a convolutional kernel and provide an iterative self-supervised learning framework to release the needs of an end-to-end training scheme with a large dataset. However, the intrinsic overfitting problem of UNN is a challenging issue for stable and robust reconstruction. To address it, we model the phase retrieval problem into a dual-constrained untrained network, in which a phase-amplitude alternating optimization framework is designed to split the intensity-to-phase problem into two tasks: phase and amplitude optimization. In the process of phase optimization, we combine a deep image prior with a total variation prior to retrain the loss function for the phase update. In the process of amplitude optimization, a total variation denoising-based Wirtinger gradient descent method is constructed to form an amplitude constraint. Alternative iterations of the two tasks result in high-performance wavefield reconstruction. Experimental results demonstrate the superiority of our method.

Topics & Concepts

OverfittingComputer scienceSmoothnessGradient descentConvolutional neural networkAmplitudeKernel (algebra)Artificial intelligenceStochastic gradient descentArtificial neural networkOptimization problemAlgorithmMathematical optimizationMathematicsOpticsPhysicsMathematical analysisCombinatoricsAdvanced X-ray Imaging TechniquesDigital Holography and MicroscopyOptical measurement and interference techniques