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Main Authors: Macarone-Palmieri, Adriano, Zambrano, Leonardo, Lewenstein, Maciej, Acin, Antonio, Farina, Donato
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.10052
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author Macarone-Palmieri, Adriano
Zambrano, Leonardo
Lewenstein, Maciej
Acin, Antonio
Farina, Donato
author_facet Macarone-Palmieri, Adriano
Zambrano, Leonardo
Lewenstein, Maciej
Acin, Antonio
Farina, Donato
contents Quantum compressed sensing is the fundamental tool for low-rank density matrix tomographic reconstruction in the informationally incomplete case. We examine situations where the acquired information is not enough to allow one to obtain a precise compressed sensing reconstruction. In this scenario, we propose a Deep Neural Network-based post-processing to improve the initial reconstruction provided by compressed sensing. The idea is to treat the estimated state as a noisy input for the network and perform a deep-supervised denoising task. After the network is applied, a projection onto the space of feasible density matrices is performed to obtain an improved final state estimation. We demonstrate through numerical experiments the improvement obtained by the denoising process and exploit the possibility of looping the inference scheme to obtain further advantages. Finally, we test the resilience of the approach to out-of-distribution data.
format Preprint
id arxiv_https___arxiv_org_abs_2405_10052
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Deep Neural Network-assisted improvement of quantum compressed sensing tomography
Macarone-Palmieri, Adriano
Zambrano, Leonardo
Lewenstein, Maciej
Acin, Antonio
Farina, Donato
Quantum Physics
Quantum compressed sensing is the fundamental tool for low-rank density matrix tomographic reconstruction in the informationally incomplete case. We examine situations where the acquired information is not enough to allow one to obtain a precise compressed sensing reconstruction. In this scenario, we propose a Deep Neural Network-based post-processing to improve the initial reconstruction provided by compressed sensing. The idea is to treat the estimated state as a noisy input for the network and perform a deep-supervised denoising task. After the network is applied, a projection onto the space of feasible density matrices is performed to obtain an improved final state estimation. We demonstrate through numerical experiments the improvement obtained by the denoising process and exploit the possibility of looping the inference scheme to obtain further advantages. Finally, we test the resilience of the approach to out-of-distribution data.
title Deep Neural Network-assisted improvement of quantum compressed sensing tomography
topic Quantum Physics
url https://arxiv.org/abs/2405.10052