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基于部分相干光学神经网络的全光感知

All-optical perception based on partially coherent optical neural networks.

作者信息

Chen Rui, Ma Yijun, Zhang Chuang, Xu Wenjun, Wang Zhong, Sun Shengli

出版信息

Opt Express. 2025 Jan 27;33(2):1609-1624. doi: 10.1364/OE.540382.

DOI:10.1364/OE.540382
PMID:39876330
Abstract

In the field of image processing, optical neural networks offer advantages such as high speed, high throughput, and low energy consumption. However, most existing coherent optical neural networks (CONN) rely on coherent light sources to establish transmission models. The use of laser inputs and electro-optic modulation devices at the front end of these neural networks diminishes their computational capability and energy efficiency, thereby limiting their practical applications in object detection tasks. This paper proposes a partially coherent optical neural network (PCONN) transmission model based on mutual intensity modulation. This model does not depend on coherent light source inputs or active electro-optic modulation devices, allowing it to directly compute and infer using natural light after simple filtering, thus achieving full optical perception from light signal acquisition to computation and inference. Simulation results indicate that the model achieves a highest classification accuracy of 96.80% and 86.77% on the MNIST and Fashion-MNIST datasets, respectively. In a binary classification simulation test based on the ISDD segmentation dataset, the model attained an accuracy of 94.69%. It is estimated that this system's computational inference speed for object detection tasks is 100 times faster than that of traditional CONN, with energy efficiency approximately 50 times greater. In summary, our proposed PCONN model addresses the limitations of conventional optical neural networks in coherent light environments and is anticipated to find applications in practical object detection scenarios.

摘要

在图像处理领域,光学神经网络具有高速、高吞吐量和低能耗等优势。然而,现有的大多数相干光学神经网络(CONN)依赖相干光源来建立传输模型。这些神经网络前端使用激光输入和电光调制器件会降低其计算能力和能量效率,从而限制了它们在目标检测任务中的实际应用。本文提出了一种基于互强度调制的部分相干光学神经网络(PCONN)传输模型。该模型不依赖相干光源输入或有源电光调制器件,经过简单滤波后可直接利用自然光进行计算和推理,从而实现从光信号采集到计算和推理的全光感知。仿真结果表明,该模型在MNIST和Fashion-MNIST数据集上分别达到了96.80%和86.77%的最高分类准确率。在基于ISDD分割数据集的二分类仿真测试中,该模型的准确率达到了94.69%。据估计,该系统在目标检测任务中的计算推理速度比传统CONN快100倍,能量效率约高50倍。综上所述,我们提出的PCONN模型解决了传统光学神经网络在相干光环境中的局限性,有望在实际目标检测场景中得到应用。

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