Doster Timothy, Watnik Abbie T
Appl Opt. 2017 Apr 20;56(12):3386-3396. doi: 10.1364/AO.56.003386.
Orbital angular momentum (OAM) beams allow for increased channel capacity in free-space optical communication. Conventionally, these OAM beams are multiplexed together at a transmitter and then propagated through the atmosphere to a receiver where, due to their orthogonality properties, they are demultiplexed. We propose a technique to demultiplex these OAM-carrying beams by capturing an image of the unique multiplexing intensity pattern and training a convolutional neural network (CNN) as a classifier. This CNN-based demultiplexing method allows for simplicity of operation as alignment is unnecessary, orthogonality constraints are loosened, and costly optical hardware is not required. We test our CNN-based technique against a traditional demultiplexing method, conjugate mode sorting, with various OAM mode sets and levels of simulated atmospheric turbulence in a laboratory setting. Furthermore, we examine our CNN-based technique with respect to added sensor noise, number of photon detections, number of pixels, unknown levels of turbulence, and training set size. Results show that the CNN-based demultiplexing method is able to demultiplex combinatorially multiplexed OAM modes from a fixed set with >99% accuracy for high levels of turbulence-well exceeding the conjugate mode demultiplexing method. We also show that this new method is robust to added sensor noise, number of photon detections, number of pixels, unknown levels of turbulence, and training set size.
轨道角动量(OAM)光束可提高自由空间光通信中的信道容量。传统上,这些OAM光束在发射端被复用在一起,然后通过大气传播到接收端,在接收端,由于它们的正交特性,它们被解复用。我们提出了一种技术,通过捕获独特复用强度图案的图像并训练卷积神经网络(CNN)作为分类器来对这些携带OAM的光束进行解复用。这种基于CNN的解复用方法操作简单,无需对准,放宽了正交性约束,并且不需要昂贵的光学硬件。在实验室环境中,我们针对传统解复用方法共轭模分选,使用各种OAM模式集和不同程度的模拟大气湍流,对我们基于CNN的技术进行了测试。此外,我们还研究了基于CNN的技术在附加传感器噪声、光子检测数量、像素数量、未知湍流程度和训练集大小方面的情况。结果表明,基于CNN的解复用方法能够以超过99%的准确率从固定集合中对组合复用的OAM模式进行解复用,对于高水平的湍流情况,远超共轭模解复用方法。我们还表明,这种新方法对附加传感器噪声、光子检测数量、像素数量、未知湍流程度和训练集大小具有鲁棒性。