QUANT-PHLGIVOct 8, 2021

Image Compression and Classification Using Qubits and Quantum Deep Learning

arXiv:2110.05476v115 citations
Originality Incremental advance
AI Analysis

This work addresses the scalability issue in quantum image classification for researchers in quantum computing, though it is incremental as it builds on prior encoding schemes.

The authors tackled the problem of classifying realistic images using quantum machine learning by proposing a novel encoding mechanism that reduces qubit requirements, enabling classification of 16x16 MNIST images on a personal laptop with accuracy comparable to classical neural networks.

Recent work suggests that quantum machine learning techniques can be used for classical image classification by encoding the images in quantum states and using a quantum neural network for inference. However, such work has been restricted to very small input images, at most 4 x 4, that are unrealistic and cannot even be accurately labeled by humans. The primary difficulties in using larger input images is that hitherto-proposed encoding schemes necessitate more qubits than are physically realizable. We propose a framework to classify larger, realistic images using quantum systems. Our approach relies on a novel encoding mechanism that embeds images in quantum states while necessitating fewer qubits than prior work. Our framework is able to classify images that are larger than previously possible, up to 16 x 16 for the MNIST dataset on a personal laptop, and obtains accuracy comparable to classical neural networks with the same number of learnable parameters. We also propose a technique for further reducing the number of qubits needed to represent images that may result in an easier physical implementation at the expense of final performance. Our work enables quantum machine learning and classification on classical datasets of dimensions that were previously intractable by physically realizable quantum computers or classical simulation

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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