Sparse coding with memristor networks.

Nat Nanotechnol

Department of Electrical Engineering and Computer Science, University of Michigan, Ann Arbor, Michigan 48109, USA.

Published: August 2017

AI Article Synopsis

  • Sparse representation is vital for feature extraction in high-dimensional data, with applications in areas like signal processing and computer vision.
  • The study implements sparse coding algorithms using a 32×32 array of analog memristors, mimicking biological neural systems for efficient sensory data processing.
  • The system enables pattern matching and neuron inhibition while allowing for the storage of various trained dictionary sets, which can be used for natural image processing.

Article Abstract

Sparse representation of information provides a powerful means to perform feature extraction on high-dimensional data and is of broad interest for applications in signal processing, computer vision, object recognition and neurobiology. Sparse coding is also believed to be a key mechanism by which biological neural systems can efficiently process a large amount of complex sensory data while consuming very little power. Here, we report the experimental implementation of sparse coding algorithms in a bio-inspired approach using a 32 × 32 crossbar array of analog memristors. This network enables efficient implementation of pattern matching and lateral neuron inhibition and allows input data to be sparsely encoded using neuron activities and stored dictionary elements. Different dictionary sets can be trained and stored in the same system, depending on the nature of the input signals. Using the sparse coding algorithm, we also perform natural image processing based on a learned dictionary.

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http://dx.doi.org/10.1038/nnano.2017.83DOI Listing

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