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Quantum Machine Learning
Quantum-tunnelling deep neural network for optical illusion recognition
arXiv
Authors: Ivan S. Maksymov
Year
2024
Paper ID
66074
Status
Preprint
Abstract Read
~2 min
Abstract Words
127
Citations
N/A
Abstract
The discovery of the quantum tunnelling (QT) effect - the transmission of particles through a high potential barrier - was one of the most impressive achievements of quantum mechanics made in the 1920s. Responding to the contemporary challenges, I introduce a deep neural network (DNN) architecture that processes information using the effect of QT. I demonstrate the ability of QT-DNN to recognise optical illusions like a human. Tasking QT-DNN to simulate human perception of the Necker cube and Rubin's vase, I provide arguments in favour of the superiority of QT-based activation functions over the activation functions optimised for modern applications in machine vision, also showing that, at the fundamental level, QT-DNN is closely related to biology-inspired DNNs and models based on the principles of quantum information processing.
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