QUANT-PHCVLGJul 23, 2021

RGB Image Classification with Quantum Convolutional Ansaetze

arXiv:2107.11099v237 citations
AI Analysis

This work addresses a specific bottleneck in quantum machine learning for vision tasks, offering incremental improvements for researchers in near-term quantum computing.

The paper tackles the problem of applying quantum convolutional circuits to RGB image classification by proposing two new ansaetze that effectively extract intra-channel information, achieving higher test accuracy than classical CNNs on datasets like CIFAR-10 and MNIST.

With the rapid growth of qubit numbers and coherence times in quantum hardware technology, implementing shallow neural networks on the so-called Noisy Intermediate-Scale Quantum (NISQ) devices has attracted a lot of interest. Many quantum (convolutional) circuit ansaetze are proposed for grayscale images classification tasks with promising empirical results. However, when applying these ansaetze on RGB images, the intra-channel information that is useful for vision tasks is not extracted effectively. In this paper, we propose two types of quantum circuit ansaetze to simulate convolution operations on RGB images, which differ in the way how inter-channel and intra-channel information are extracted. To the best of our knowledge, this is the first work of a quantum convolutional circuit to deal with RGB images effectively, with a higher test accuracy compared to the purely classical CNNs. We also investigate the relationship between the size of quantum circuit ansatz and the learnability of the hybrid quantum-classical convolutional neural network. Through experiments based on CIFAR-10 and MNIST datasets, we demonstrate that a larger size of the quantum circuit ansatz improves predictive performance in multiclass classification tasks, providing useful insights for near term quantum algorithm developments.

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