Litcius/Paper detail

Bayesian homodyne and heterodyne tomography

Joseph C. Chapman, Joseph M. Lukens, Bing Qi, Raphael C. Pooser, Nicholas A. Peters

2022Optics Express15 citationsDOIOpen Access PDF

Abstract

Continuous-variable (CV) photonic states are of increasing interest in quantum information science, bolstered by features such as deterministic resource state generation and error correction via bosonic codes. Data-efficient characterization methods will prove critical in the fine-tuning and maturation of such CV quantum technology. Although Bayesian inference offers appealing properties-including uncertainty quantification and optimality in mean-squared error-Bayesian methods have yet to be demonstrated for the tomography of arbitrary CV states. Here we introduce a complete Bayesian quantum state tomography workflow capable of inferring generic CV states measured by homodyne or heterodyne detection, with no assumption of Gaussianity. As examples, we demonstrate our approach on experimental coherent, thermal, and cat state data, obtaining excellent agreement between our Bayesian estimates and theoretical predictions. Our approach lays the groundwork for Bayesian estimation of highly complex CV quantum states in emerging quantum photonic platforms, such as quantum communications networks and sensors.

Topics & Concepts

Bayesian probabilityQuantum tomographyPhysicsHeterodyne (poetry)Bayesian inferenceHomodyne detectionQuantum imagingQuantum stateAlgorithmQuantumOpticsQuantum opticsPhotonicsStatistical physicsHeterodyne detectionDirect-conversion receiverComputer scienceCoherent statesQuantum key distributionBayes' theoremQuantum informationTomographyInferenceQuantum sensorInterferometryQuantum metrologyState (computer science)Statistical inferenceQuantum information scienceBayesian statisticsBayesian networkQuantum mechanicsOptical coherence tomographyMathematicsQuantum Information and CryptographyQuantum Computing Algorithms and ArchitectureNeural Networks and Reservoir Computing