All-optical information processing capacity of diffractive networks

Author(s):  
Onur Kulce ◽  
Deniz Mengu ◽  
Yair Rivenson ◽  
Aydogan Ozcan
2021 ◽  
Author(s):  
Yaping Ruan ◽  
Haodong Wu ◽  
Shi-Jun Ge ◽  
Lei Tang ◽  
Zhixiang Li ◽  
...  

Abstract All-optical switching increasingly plays an important role in optical information processing. However, simultaneous achievement of ultralow power consumption, broad bandwidth and high extinction ratio remains challenging. We experimentally demonstrate an ultralow-power all-optical switching by exploiting chiral interaction between light and optically active material in a Mach-Zehnder interferometer (MZI). We achieve switching extinction ratio of 20.0(3.8) and 14.7(2.8) dB with power cost of 66.1(0.7) and 1.3(0.1) fJ/bit, respectively. The bandwidth of our all-optical switching is about 4.2 GHz. Our theoretical analysis shows that the switching bandwidth can, in principle, exceed 110 GHz. Moreover, the switching has the potential to be operated at few-photon level. Our all-optical switching exploits a chiral MZI made of linear optical components. It excludes the requisite of high-quality optical cavity or large optical nonlinearity, thus greatly simplifying realization. Our scheme paves the way towards ultralow-power and ultrafast all-optical information processing.


2021 ◽  
Vol 10 (1) ◽  
Author(s):  
Onur Kulce ◽  
Deniz Mengu ◽  
Yair Rivenson ◽  
Aydogan Ozcan

AbstractThe precise engineering of materials and surfaces has been at the heart of some of the recent advances in optics and photonics. These advances related to the engineering of materials with new functionalities have also opened up exciting avenues for designing trainable surfaces that can perform computation and machine-learning tasks through light–matter interactions and diffraction. Here, we analyze the information-processing capacity of coherent optical networks formed by diffractive surfaces that are trained to perform an all-optical computational task between a given input and output field-of-view. We show that the dimensionality of the all-optical solution space covering the complex-valued transformations between the input and output fields-of-view is linearly proportional to the number of diffractive surfaces within the optical network, up to a limit that is dictated by the extent of the input and output fields-of-view. Deeper diffractive networks that are composed of larger numbers of trainable surfaces can cover a higher-dimensional subspace of the complex-valued linear transformations between a larger input field-of-view and a larger output field-of-view and exhibit depth advantages in terms of their statistical inference, learning, and generalization capabilities for different image classification tasks when compared with a single trainable diffractive surface. These analyses and conclusions are broadly applicable to various forms of diffractive surfaces, including, e.g., plasmonic and/or dielectric-based metasurfaces and flat optics, which can be used to form all-optical processors.


2005 ◽  
Author(s):  
Marin Solja-i ◽  
Elefterios Lidorikis ◽  
John D. Joannopoulos ◽  
Lene V. Hau ◽  
Mordechai Segev ◽  
...  

2002 ◽  
Vol 6 (4) ◽  
pp. 165-171 ◽  
Author(s):  
Seok Lee ◽  
Jae-Hun Kim ◽  
Young-Il Kim ◽  
Young-Tae Byun ◽  
Young-Min Jhon ◽  
...  

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