2D optoelectronic neuron array: harnessing ambient light for broadband nonlinear optical processing

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Prof. Xiangfeng Duan

In a recent paper published in Nature Communications, a research team led by Professors Xiangfeng Duan and Aydogan Ozcan (UCLA Department of Electrical and Computer Engineering) reported a new strategy using an optoelectronic neuron array to achieve strong optical nonlinearity at low optical intensity for broadband incoherent light.

From UCLA Samueli School of Engineering:

2D optoelectronic neuron array achieves broadband and low-loss optical nonlinearity accessible with ambient light

The photo and schematic of the presented optoelectronic neuron array. Each neuron uses the local incident light intensity to control the LC modulator, creating a tailored nonlinear transmission function. Image Credit: Duan Lab and Ozcan Lab @ UCLA.

Nonlinear optical processing of ambient natural light is highly desired for computational imaging and sensing. A team led by Xiangfeng Duan and Aydogan Ozcan at the University of California, Los Angeles (UCLA), reported a novel optoelectronic neuron array that allows nonlinear transmission of spatially incoherent light, achieving a large nonlinear contrast over a broad spectrum at orders-of-magnitude lower intensity than achievable in most optical nonlinear materials. The team merges two-dimensional (2D) transparent phototransistors (TPTs) with liquid crystal (LC) modulators to create a 10,000-pixel array of optoelectronic neurons, and experimentally demonstrated an intelligent imaging system using this device that instantly attenuates input glares while retaining the weaker-intensity objects captured by a cellphone camera. This intelligent glare-reduction is important for various imaging applications, including autonomous driving, machine vision, and security cameras. The rapid nonlinear processing of incoherent broadband light might also find applications in optical computing, where nonlinear activation functions for ambient light conditions are highly sought.

Light can compute functions during its propagation and interaction with structured materials, with high speed and low energy consumption. Achieving universal computing using all-optical neural networks requires optical activation layers with nonlinear dependence on input. However, the existing optical nonlinear materials are either slow or have very weak nonlinearity under the natural light intensity levels captured by a camera. Therefore, the design and development of new optical activation functions is essential for realizing optical neural networks that compute with ambient light.

In a recent paper published in Nature Communications, a research team led by Professor Xiangfeng Duan and Professor Aydogan Ozcan from the University of California, Los Angeles (UCLA), USA, reported a new strategy using an optoelectronic neuron array to achieve strong optical nonlinearity at low optical intensity for broadband incoherent light. Their device heterogeneously integrates two-dimensional (2D) transparent phototransistors (TPTs) with liquid crystal (LC) modulators. Under low light illumination, the TPT is highly resistive, and most of the voltage drop occurs on the TPT. The LC is unperturbed and remains transmissive. At high input optical power, however, the TPT becomes conductive, so most of the voltage drops across the LC layer, shutting off the optical transmission.

In their experimental demonstration, the designed optoelectronic neurons allowed spatially and temporally incoherent light in the visible wavelengths to nonlinearly modulate its own amplitude with only ~20% photon loss. They fabricated a 100×100 (10,000) optoelectronic neuron array and demonstrated a strong nonlinear behavior under laser and white light illumination. The nonlinear optoelectronic array was further integrated as part of a cellphone-based imaging system for intelligent glare reduction, selectively blocking intense glares while presenting little attenuation for the weaker-intensity objects within the imaging field of view. The device modeling suggests a very low optical intensity threshold of 56 μW/cm 2 to generate a significant nonlinear response, and a low energy consumption of 69 fJ per photonic activation for the optimized devices.

Such an optoelectronic neuron array enables nonlinear self-amplitude modulation of spatially incoherent light, featuring a low optical intensity threshold, strong nonlinear contrast, broad spectral response, fast speed and low photon loss. The performance is highly desirable for image processing and visual computing systems that do not rely on intense laser beams. Besides intelligent glare reduction, the cascaded integration of optoelectronic neuron arrays with linear diffractive optical processors could be used to construct nonlinear optical networks, potentially finding widespread applications in computational imaging and sensing, also opening the door for new nonlinear optical processor designs using ambient light.

See the article:

Dehui Zhang, Dong Xu, Yuhang Li, et al. “Broadband nonlinear modulation of incoherent light using a transparent optoelectronic neuron array”, Nature Communications
https://www.nature.com/articles/s41467-024-46387-5

Contact:

Xiangfeng Duan
Department of Chemistry and Biochemistry, University of California, Los Angeles, California 90095, USA.
California NanoSystems Institute (CNSI), University of California, Los Angeles, California 90095, USA
xduan@chem.ucla.edu,

Aydogan Ozcan
Department of Electrical and Computer Engineering, University of California, Los Angeles, California 90095, USA
Department of Bioengineering, University of California, Los Angeles, California 90095, USA
California NanoSystems Institute (CNSI), University of California, Los Angeles, California 90095, USA
ozcan@ucla.edu

The authors acknowledge the support of the Noble Family Foundation.