English

Classification of time-domain waveforms using a speckle-based optical reservoir computer

Optics 2020-01-15 v1 Signal Processing

Abstract

Reservoir computing is a recurrent machine learning framework that expands the dimensionality of a problem by mapping an input signal into a higher-dimension reservoir space that can capture and predict features of complex, non-linear temporal dynamics. Here, we report on a bulk optical demonstration of an analog reservoir computer using speckles generated by propagating a laser beam modulated with a spatial light modulator through a multimode waveguide. We demonstrate that the hardware can successfully perform a multivariate audio classification task performed using the Japanese vowel speakers public data set. We perform full wave optical calculations of this architecture implemented in a chip-scale platform using an SiO2 waveguide and demonstrate that it performs as well as a fully numerical implementation of reservoir computing. As all the optical components used in the experiment can be fabricated using a commercial photonic integrated circuit foundry, our result demonstrates a framework for building a scalable, chip-scale, reservoir computer capable of performing optical signal processing.

Keywords

Cite

@article{arxiv.1909.12489,
  title  = {Classification of time-domain waveforms using a speckle-based optical reservoir computer},
  author = {Uttam Paudel and Marta Luengo-Kovac and Jacob Pilawa and T. Justin Shaw and George C. Valley},
  journal= {arXiv preprint arXiv:1909.12489},
  year   = {2020}
}
R2 v1 2026-06-23T11:27:45.401Z