Unconventional Integrated Photonic Accelerators for High-Throughput Convolutional Neural Networks

Author:

Tsirigotis Aris1,Sarantoglou George1,Skontranis Menelaos1,Deligiannidis Stavros2,Sozos Kostas2,Tsilikas Giannis3,Dermanis Dimitris1,Bogris Adonis2,Mesaritakis Charis1

Affiliation:

1. Department of Information and Communication Systems Engineering, Engineering School, University of the Aegean, Samos, Greece.

2. Department of Informatics and Computer Engineering, University of West Attica, Egaleo, Greece.

3. School of Applied Mathematical and Physical Sciences, National Technical University of Athens, Athens, Greece.

Abstract

We provide an overview of the rapidly evolving landscape of integrated photonic neuromorphic architectures, specifically targeting the implementation of convolutional neural networks. The exploding research momentum stems from the well-known advantages of photonic circuits compared to digital electronics, and at the same time, it is driven by the massive need for cognitive image/video processing. In this context, we provide a detailed literature review on photonic cores operating as convolutional neural networks, covering either the functionality of a conventional neural network or its spiking counterpart. Moreover, we propose 2 alternative photonic approaches that refrain from simply transferring neural network concepts directly into the optical domain; instead, they focus on fusing photonic, digital electronic, and event-based bioinspired processing to optimally exploit the virtues of each scheme. These approaches can offer beyond state-of-the-art performance while relying on realistic, scalable technology. The first approach is based on a photonic integrated platform and a bioinspired spectrum-slicing technique. The photonic chip allows feature extraction through optical filtering with low power consumption and an equivalent computational efficiency of 72 femtojoules per multiply-and-accumulate operation for 5-bit precision. When combined with typical digital neural networks, an almost 5-fold reduction in the number of parameters was achieved with a minor loss of accuracy compared to established convolutional neural networks. The second approach follows a bioisomorphic route in which miniaturized spiking laser neurons and unsupervised bioinspired training are unified in a deep architecture, revealing a noise-resilient and power-efficient proposition.

Publisher

American Association for the Advancement of Science (AAAS)

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