RBM Image Generation Using the D-Wave 2000Q [article]

Jennifer Sleeman, Milton Halem, John Dorband, Maryland Shared Open Access Repository
2020
We describe a hybrid approach that combines a deep convolutional neural network autoencoder and a quantum Restricted Boltzmann Machine (RBM) for image generation using the D-Wave 2000Q. We compare the quantum learned distribution with the classical learned distribution, and quantify the quantum effects on latent representations.
doi:10.13016/m2zspl-zhvf fatcat:4mzz266hkramjgr33pmd24tlqi