2019
DOI: 10.30748/soi.2019.156.11
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Designing of array neuron-equivalentors with a quasi-universal activation function for creating a self-learning equivalent- convolutional neural structures

Abstract: In the paper, we consider the urgent need to create highly efficient hardware accelerators for machine learning algorithms, including convolutional and deep neural networks, for associative memory models, clustering, and pattern recognition. We show a brief overview of our related works the advantages of the equivalent models (EM) for designing bio-inspired systems. Such EM-paradigms are very perspective for processing, clustering, recognition, storing large size, strongly correlated, highly noised images and … Show more

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