QUANT-PHLGSep 16, 2022

Quantum Vision Transformers

arXiv:2209.08167v2113 citationsh-index: 38
Originality Incremental advance
AI Analysis

This work addresses the challenge of applying quantum computing to vision tasks, offering a novel approach that could enhance efficiency in AI, though it is incremental as it builds upon existing quantum and classical methods.

The authors tackled the problem of designing quantum transformers for image analysis by introducing three types of quantum transformers, including one with a theoretical advantage in runtime and parameters, and demonstrated competitively or better performance on medical image datasets with fewer parameters compared to classical benchmarks.

In this work, quantum transformers are designed and analysed in detail by extending the state-of-the-art classical transformer neural network architectures known to be very performant in natural language processing and image analysis. Building upon the previous work, which uses parametrised quantum circuits for data loading and orthogonal neural layers, we introduce three types of quantum transformers for training and inference, including a quantum transformer based on compound matrices, which guarantees a theoretical advantage of the quantum attention mechanism compared to their classical counterpart both in terms of asymptotic run time and the number of model parameters. These quantum architectures can be built using shallow quantum circuits and produce qualitatively different classification models. The three proposed quantum attention layers vary on the spectrum between closely following the classical transformers and exhibiting more quantum characteristics. As building blocks of the quantum transformer, we propose a novel method for loading a matrix as quantum states as well as two new trainable quantum orthogonal layers adaptable to different levels of connectivity and quality of quantum computers. We performed extensive simulations of the quantum transformers on standard medical image datasets that showed competitively, and at times better performance compared to the classical benchmarks, including the best-in-class classical vision transformers. The quantum transformers we trained on these small-scale datasets require fewer parameters compared to standard classical benchmarks. Finally, we implemented our quantum transformers on superconducting quantum computers and obtained encouraging results for up to six qubit experiments.

Foundations

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