All-optical Fourier neural network using partially coherent light

Jianwei Qin, Yanbing Liu, Yan Liu, Xun Liu, Wei Li, Fangwei Ye
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Abstract

Optical neural networks present distinct advantages over traditional electrical counterparts, such as accelerated data processing and reduced energy consumption. While coherent light is conventionally employed in optical neural networks, our study proposes harnessing spatially incoherent light in all-optical Fourier neural networks. Contrary to numerical predictions of declining target recognition accuracy with increased incoherence, our experimental results demonstrate a surprising outcome: improved accuracy with incoherent light. We attribute this unexpected enhancement to spatially incoherent light's ability to alleviate experimental errors like diffraction rings, laser speckle, and edge effects. Our controlled experiments introduced spatial incoherence by passing monochromatic light through a spatial light modulator featuring a dynamically changing random phase array. These findings underscore partially coherent light's potential to optimize optical neural networks, delivering dependable and efficient solutions for applications demanding consistent accuracy and robustness across diverse conditions.
使用部分相干光的全光学傅立叶神经网络
与传统的电子神经网络相比,光学神经网络具有明显的优势,如加速数据处理和降低能耗。传统的光学神经网络采用相干光,而我们的研究则建议在全光学傅立叶神经网络中利用空间非相干光。随着不连贯度的增加,目标识别的准确性会下降,与这一数字预测相反,我们的实验结果表明了一个令人惊讶的结果:不连贯光下的准确性提高了。我们将这种意想不到的提高归因于空间不连贯光能够减轻衍射环、激光斑点和边缘效应等实验误差。我们的受控实验通过动态变化的随机相位阵列将单色光通过空间光调制器,从而引入了空间非相干性。这些发现进一步证实了部分相干光在优化光学神经网络方面的潜力,为需要在不同条件下保持稳定精度和鲁棒性的应用提供了可靠、高效的解决方案。
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