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An unsupervised deep learning algorithm for single-site reconstruction in quantum gas microscopes

Alexander Impertro, Julian F. Wienand, Sophie Häfele, Hendrik von Raven, Scott Hubele, Till Klostermann, Cesar R. Cabrera, Immanuel Bloch, Monika Aidelsburger

2023Communications Physics29 citationsDOIOpen Access PDF

Abstract

Abstract In quantum gas microscopy experiments, reconstructing the site-resolved lattice occupation with high fidelity is essential for the accurate extraction of physical observables. For short interatomic separations and limited signal-to-noise ratio, this task becomes increasingly challenging. Common methods rapidly decline in performance as the lattice spacing is decreased below half the imaging resolution. Here, we present an algorithm based on deep convolutional neural networks to reconstruct the site-resolved lattice occupation with high fidelity. The algorithm can be directly trained in an unsupervised fashion with experimental fluorescence images and allows for a fast reconstruction of large images containing several thousand lattice sites. We benchmark its performance using a quantum gas microscope with cesium atoms that utilizes short-spaced optical lattices with lattice constant 383.5 nm and a typical Rayleigh resolution of 850 nm. We obtain promising reconstruction fidelities ≳ 96% across all fillings based on a statistical analysis. We anticipate this algorithm to enable novel experiments with shorter lattice spacing, boost the readout fidelity and speed of lower-resolution imaging systems, and furthermore find application in related experiments such as trapped ions.

Topics & Concepts

Optical latticeLattice (music)AlgorithmLattice constantMicroscopeComputer scienceConvolutional neural networkObservableHigh fidelityMicroscopyQuantumArtificial intelligencePhysicsOpticsDiffractionQuantum mechanicsAcousticsSuperfluidityCold Atom Physics and Bose-Einstein CondensatesAtomic and Subatomic Physics ResearchElectronic and Structural Properties of Oxides
An unsupervised deep learning algorithm for single-site reconstruction in quantum gas microscopes | Litcius