An on-chip photonic deep neural network for image classification

Deep neural networks with applications from computer vision to medical diagnosis 1 – 5 are commonly implemented using clock-based processors 6 – 14 , in which computation speed is mainly limited by the clock frequency and the memory access time. In the optical domain, despite advances in photonic co...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:Nature (London) 2022-06, Vol.606 (7914), p.501-506
Hauptverfasser: Ashtiani, Farshid, Geers, Alexander J., Aflatouni, Firooz
Format: Artikel
Sprache:eng
Schlagworte:
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
Beschreibung
Zusammenfassung:Deep neural networks with applications from computer vision to medical diagnosis 1 – 5 are commonly implemented using clock-based processors 6 – 14 , in which computation speed is mainly limited by the clock frequency and the memory access time. In the optical domain, despite advances in photonic computation 15 – 17 , the lack of scalable on-chip optical non-linearity and the loss of photonic devices limit the scalability of optical deep networks. Here we report an integrated end-to-end photonic deep neural network (PDNN) that performs sub-nanosecond image classification through direct processing of the optical waves impinging on the on-chip pixel array as they propagate through layers of neurons. In each neuron, linear computation is performed optically and the non-linear activation function is realized opto-electronically, allowing a classification time of under 570 ps, which is comparable with a single clock cycle of state-of-the-art digital platforms. A uniformly distributed supply light provides the same per-neuron optical output range, allowing scalability to large-scale PDNNs. Two-class and four-class classification of handwritten letters with accuracies higher than 93.8% and 89.8%, respectively, is demonstrated. Direct, clock-less processing of optical data eliminates analogue-to-digital conversion and the requirement for a large memory module, allowing faster and more energy efficient neural networks for the next generations of deep learning systems. Using a three-layer opto-electronic neural network, direct, clock-less sub-nanosecond image classification on a silicon photonics chip is demonstrated, achieving a classification time comparable with a single clock cycle of state-of-the-art digital implementations.
ISSN:0028-0836
1476-4687
DOI:10.1038/s41586-022-04714-0