4.7 Article

Focusing light through scattering media by reinforced hybrid algorithms

Journal

APL PHOTONICS
Volume 5, Issue 1, Pages -

Publisher

AIP Publishing
DOI: 10.1063/1.5131181

Keywords

-

Funding

  1. A*STAR SERC AME Program: Nanoantenna Spatial Light Modulators for Next Generation Display Technologies [A18A7b0058]
  2. National Natural Science Foundation of China [81671726, 81627805, 81930048]
  3. Hong Kong Research Grant Council [25204416]
  4. Hong Kong Innovation and Technology Commission [ITS/022/18]
  5. Shenzhen Science and Technology Innovation Commission [JCYJ20170818104421564]

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Light scattering inside disordered media poses a significant challenge to achieve deep depth and high resolution simultaneously in biomedical optical imaging. Wavefront shaping emerged recently as one of the most potential methods to tackle this problem. So far, numerous algorithms have been reported, while each has its own pros and cons. In this article, we exploit a new thought that one algorithm can be reinforced by another complementary algorithm since they effectively compensate each other's weaknesses, resulting in a more efficient hybrid algorithm. Herein, we introduce a systematical approach named GeneNN (Genetic Neural Network) as a proof of concept. Preliminary light focusing has been achieved by a deep neural network, whose results are fed to a genetic algorithm as an initial condition. The genetic algorithm furthers the optimization, evolving to converge into the global optimum. Experimental results demonstrate that with the proposed GeneNN, optimization speed is almost doubled and wavefront shaping performance can be improved up to 40% over conventional methods. The reinforced hybrid algorithm shows great potential in facilitating various biomedical and optical imaging techniques.

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