Quantum Transfer Learning with Adversarial Robustness for Classification of High‐Resolution Image Datasets
Amena Khatun,
Muhammad Usman
Abstract:The application of quantum machine learning to large‐scale high‐resolution image datasets is not yet possible due to the limited number of qubits and relatively high level of noise in the current generation of quantum devices. In this work, this challenge is addressed by proposing a quantum transfer learning (QTL) architecture that integrates quantum variational circuits with a classical machine learning network pre‐trained on ImageNet dataset. Through a systematic set of simulations over a variety of image da… Show more
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