Nikolaos Toulgaridis, Eleni Bougioukou and Theodore Antonakopoulos:
Architecture and Implementation of a Restricted Boltzmann Machine for Handwritten Digits Recognition
Ôhe 6th International Conference on Modern Circuits and Systems Technologies (MOCAST), 4-6 May 2017, Thessaloniki, Greece.
Abstract: Restricted Boltzmann Machines are artificial neural networks used in many types of statistical
classification. In this work we present the architecture and implementation of such a neural network for fast recognition of hand-written digits.
We use fixed and floating point arithmetic for minimizing the required hardware resources, and the use of pipeline results to a processing rate
of more than 1 Mimages/sec per RBM. Four neural networks have been used on a
PCIe-based hardware accelerator that uses a Virtex-7 FPGA, and that
results to a total processing rate of more than 4 Mimages/sec.
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concerning this paper, please contact either one of the authors or send an e-mail to:
comes-sup@ece.upatras.gr
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