Super-Resolution Parameter Estimation Using Machine Learning-Assisted Spatial Mode Demultiplexing

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Abstract

We present the use of a light-weight machine learning (ML) model to estimate the separation and relative brightness of two incoherent light sources below the diffraction limit. We use a multi-planar light converter (MPLC) to implement spatial mode demultiplexing (SPADE) imaging. The ML model is trained, validated, and tested on data generated experimentally in the laboratory. The ML model accurately estimates the separation of the sources to up to two orders of magnitude below the diffraction limit when the sources are of comparable brightness, and provides accurate sub-diffraction separation resolution even when the sources differ in brightness by four orders of magnitude. The present results are limited by cross talk in the MPLC and support the potential use of ML-assisted SPADE for astronomical imaging below the diffraction limit.

Original languageEnglish
Article number5395
JournalSensors
Volume25
Issue number17
Early online date1 Sept 2025
DOIs
Publication statusPublished - Sept 2025

Funding

FundersFunder number
ARC Australian Research Council DE240100587, CE170100009

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