Iterative, backscatter-analysis algorithms for increasing transmission and focusing light through highly-scattering random media
Curtis Jin, Raj Rao Nadakuditi, Eric Michielssen, Stephen Rand

TL;DR
This paper demonstrates the existence of highly transmitting eigen-wavefronts in strongly scattering media through numerical analysis and develops algorithms based on backscatter analysis to enhance light transmission and focusing in such media.
Contribution
It provides rigorous numerical evidence for highly transmitting eigen-wavefronts and introduces physically realizable algorithms for increasing transmission and focusing using backscatter analysis.
Findings
Existence of highly transmitting eigen-wavefronts confirmed numerically.
Algorithms converge rapidly to near-optimal wavefronts in few iterations.
Fewer measurements needed to produce a near-optimal focus using the proposed methods.
Abstract
Scattering hinders the passage of light through random media and consequently limits the usefulness of optical techniques for sensing and imaging. Thus, methods for increasing the transmission of light through such random media are of interest. Against this backdrop, recent theoretical and experimental advances have suggested the existence of a few highly transmitting eigen-wavefronts with transmission coefficients close to one in strongly backscattering random media. Here, we numerically analyze this phenomenon in 2-D with fully spectrally accurate simulators and provide rigorous numerical evidence confirming the existence of these highly transmitting eigen-wavefronts in random media with periodic boundary conditions that is composed of hundreds of thousands of non-absorbing scatterers. Motivated by bio-imaging applications where it is not possible to measure the transmitted…
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