Digital Implementation of Oscillatory Neural Network for Image Recognition Applications

Author:

Abernot Madeleine,Gil Thierry,Jiménez Manuel,Núñez Juan,Avellido María J.,Linares-Barranco Bernabé,Gonos Théophile,Hardelin Tanguy,Todri-Sanial Aida

Abstract

Computing paradigm based on von Neuman architectures cannot keep up with the ever-increasing data growth (also called “data deluge gap”). This has resulted in investigating novel computing paradigms and design approaches at all levels from materials to system-level implementations and applications. An alternative computing approach based on artificial neural networks uses oscillators to compute or Oscillatory Neural Networks (ONNs). ONNs can perform computations efficiently and can be used to build a more extensive neuromorphic system. Here, we address a fundamental problem: can we efficiently perform artificial intelligence applications with ONNs? We present a digital ONN implementation to show a proof-of-concept of the ONN approach of “computing-in-phase” for pattern recognition applications. To the best of our knowledge, this is the first attempt to implement an FPGA-based fully-digital ONN. We report ONN accuracy, training, inference, memory capacity, operating frequency, hardware resources based on simulations and implementations of 5 × 3 and 10 × 6 ONNs. We present the digital ONN implementation on FPGA for pattern recognition applications such as performing digits recognition from a camera stream. We discuss practical challenges and future directions in implementing digital ONN.

Funder

Horizon 2020 Framework Programme

Publisher

Frontiers Media SA

Subject

General Neuroscience

Reference62 articles.

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1. Digital Implementation of On-Chip Hebbian Learning for Oscillatory Neural Network;2023 IEEE/ACM International Symposium on Low Power Electronics and Design (ISLPED);2023-08-07

2. Energy-Efficient Machine Learning Acceleration: From Technologies to Circuits and Systems;2023 IEEE/ACM International Symposium on Low Power Electronics and Design (ISLPED);2023-08-07

3. Superconducting-Oscillatory Neural Network With Pixel Error Detection for Image Recognition;IEEE Transactions on Applied Superconductivity;2023-08

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