Yutaro Katano, Tetsuhiko Muroi, N. Kinoshita, Norihiko Ishii
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Demodulation of Multi-Level Data using Convolutional Neural Network in Holographic Data Storage
We evaluated a deep learning-based data demodulation method for multi-level recording data in holographic data storage. This method demodulates reproduced data as pattern recognition using a convolutional neural network. The network learns the rule of demodulation in consideration of optical noise that deteriorates the quality of reproduced data. Unlike with a conventional hard decision method, the learnt network demodulated the noise-added data accurately and decreased demodulation errors.