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    • 摘要: 为了加快基于深度学习的轨道角动量光束识别模型的训练速度,提出使用迁移学习的方式识别轨道角动量光束,并利用次谐波法生成大气湍流相位屏仿真大气湍流,以空间光调制器加载相位屏的方式搭建模拟湍流环境,基于迁移学习的轨道角动量光束识别系统在弱湍流和中湍流环境下均获得了90%以上的识别率。并与传统深度学习方式在模型训练速度、识别率等方面进行性能对比,证明了在弱、中湍流环境中,基于迁移学习的轨道角动量光束识别方法在保持较高识别率的前提下可以减少训练时间。

       

      Abstract: This paper proposes a transfer learning method to recognize the orbital angular momentum beam to speed up the training speed of the orbital angular momentum beam recognition model based on deep learning. In order to simulate the atmospheric turbulence, we generate the atmospheric turbulence phase screen by the sub-harmonic method and build the simulated turbulence environment by loading the phase screen on the spatial light modulator. The orbital angular momentum beam recognition system based on transfer learning has achieved a recognition rate of more than 90% in both weak and medium turbulent environments. Compared with the traditional deep learning method in the aspects of model training speed and recognition rate, it is proved that the orbital angular momentum beam recognition method based on transfer learning can reduce the training time while maintaining a high recognition rate in the weak and medium turbulent environment.