A quantum GAN for entanglement detection and image classification
James E. Steck, Elizabeth C. Behrman

TL;DR
This paper introduces a quantum generative adversarial network (QGAN) designed for entanglement detection and image classification, leveraging quantum systems for improved robustness and potential applications in quantum image processing.
Contribution
It presents the first implementation of a QGAN for quantum state discrimination and demonstrates its applicability to quantum image encoding and classification tasks.
Findings
Successfully generated and discriminated quantum product states
Demonstrated potential for quantum image encoding and detection
Showed robustness of quantum machine learning on noisy devices
Abstract
Machine learning can be used as a systematic method to non-algorithmically program quantum computers. Quantum machine learning enables us to perform computations without breaking down an algorithm into its gate building blocks, eliminating that difficult step and potentially reducing unnecessary complexity. In addition, the machine learning approach is robust to both noise and to decoherence, which is ideal for running on inherently noisy NISQ devices which are limited in the number of qubits available for error correction. Here we apply our prior work in quantum machine learning technique, to create a QGAN, a quantum analog to the classical Stylenet GANs developed by Kerras for image generation and classification. A quantum system is used as a generator and a separate quantum system is used as a discriminator. The generator Hamiltonian quantum parameters are augmented by quantum style…
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Taxonomy
TopicsData Visualization and Analytics · Machine Learning in Materials Science · Computational Physics and Python Applications
