TL;DR
This paper demonstrates how deep neural networks, including CNNs and generative adversarial networks, can classify and reconstruct optical quantum states with high accuracy, even under noisy conditions and with limited data, advancing quantum state tomography techniques.
Contribution
It introduces neural network-based methods for quantum state classification and reconstruction, incorporating quantum physics knowledge and adaptive learning strategies, outperforming traditional techniques in efficiency and accuracy.
Findings
CNNs classify noisy quantum states with high accuracy
QST-CGAN reconstructs states with fewer data and iterations
Neural networks outperform standard maximum likelihood methods
Abstract
We apply deep-neural-network-based techniques to quantum state classification and reconstruction. We demonstrate high classification accuracies and reconstruction fidelities, even in the presence of noise and with little data. Using optical quantum states as examples, we first demonstrate how convolutional neural networks (CNNs) can successfully classify several types of states distorted by, e.g., additive Gaussian noise or photon loss. We further show that a CNN trained on noisy inputs can learn to identify the most important regions in the data, which potentially can reduce the cost of tomography by guiding adaptive data collection. Secondly, we demonstrate reconstruction of quantum-state density matrices using neural networks that incorporate quantum-physics knowledge. The knowledge is implemented as custom neural-network layers that convert outputs from standard feedforward neural…
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