Single-Photon Image Classification
Thomas Fischbacher, Luciano Sbaiz

TL;DR
This paper demonstrates a room-temperature optical quantum model for classifying MNIST images with significantly higher accuracy than classical photon detection, serving as both a practical and educational tool for quantum measurement concepts.
Contribution
It introduces a feasible optical quantum classification method at room temperature that surpasses classical limits and provides detailed training and educational insights.
Findings
Classical photon detection accuracy: 21.27% for MNIST.
Optical quantum model accuracy: at least 41.27% for MNIST.
Educational utility for teaching quantum measurement.
Abstract
Quantum computing-based machine learning mainly focuses on quantum computing hardware that is experimentally challenging to realize due to requiring quantum gates that operate at very low temperature. Instead, we demonstrate the existence of a lower performance and much lower effort island on the accuracy-vs-qubits graph that may well be experimentally accessible with room temperature optics. This high temperature "quantum computing toy model" is nevertheless interesting to study as it allows rather accessible explanations of key concepts in quantum computing, in particular interference, entanglement, and the measurement process. We specifically study the problem of classifying an example from the MNIST and Fashion-MNIST datasets, subject to the constraint that we have to make a prediction after the detection of the very first photon that passed a coherently illuminated filter showing…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Quantum Information and Cryptography · Quantum Computing Algorithms and Architecture
