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Large-scale spatiotemporal photonic reservoir computer for image classification

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arxiv 2004.02542 v1 pith:PMF2QNBA submitted 2020-04-06 cs.NE eess.IV

Large-scale spatiotemporal photonic reservoir computer for image classification

classification cs.NE eess.IV
keywords classificationfeedforwardnetworknetworksphotonicrecurrentreservoirachieve
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a scalable photonic architecture for implementation of feedforward and recurrent neural networks to perform the classification of handwritten digits from the MNIST database. Our experiment exploits off-the-shelf optical and electronic components to currently achieve a network size of 16,384 nodes. Both network types are designed within the the reservoir computing paradigm with randomly weighted input and hidden layers. Using various feature extraction techniques (e.g. histograms of oriented gradients, zoning, Gabor filters) and a simple training procedure consisting of linear regression and winner-takes-all decision strategy, we demonstrate numerically and experimentally that a feedforward network allows for classification error rate of 1%, which is at the state-of-the-art for experimental implementations and remains competitive with more advanced algorithmic approaches. We also investigate recurrent networks in numerical simulations by explicitly activating the temporal dynamics, and predict a performance improvement over the feedforward configuration.

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