信号处理
数字图像处理
图像处理
背景(考古学)
计算机科学
模拟信号处理
非线性系统
光学
非线性光学
数字信号处理
转换器
电子工程
功率(物理)
物理
人工智能
工程类
计算机硬件
图像(数学)
激光器
古生物学
生物
量子力学
作者
Domenico de Ceglia,Andrea Alù,Dragomir N. Neshev,Costantino De Angelis
摘要
Digital signal processing has revolutionized many fields of science and engineering, but it still shows critical limits, mainly related to the complexity, power consumption, and limited speed of analogue-to-digital converters. A long-sought solution to overcome these hurdles is optical analog computing. In this regard, flat optics has been recently unveiled as a powerful platform to perform data processing in real-time, with low power consumption and a small footprint. So far, these explorations have been mainly limited to linear optics. Arguably, significantly more impact may be garnered from pushing this operation towards nonlinear processing of the incoming signals. In this context, we demonstrate here that nonlinear phenomena combined with engineered nonlocality in flat optics devices can be leveraged to synthesize Volterra kernels able to outperform linear optical analog image processing.
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