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arxiv: 1904.00239 · v1 · pith:UETI7CRLnew · submitted 2019-03-30 · 📡 eess.IV · physics.optics

Hermite-Gaussian Mode Detection via Convolution Neural Networks

classification 📡 eess.IV physics.optics
keywords modescavitycommunicationconvolutionhermite-gaussianlasernetworksneural
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Hermite-Gaussian (HG) laser modes are a complete set of solutions to the free-space paraxial wave equation in Cartesian coordinates and represent a close approximation to physically-realizable laser cavity modes. Additionally, HG modes can be mode-multiplexed to significantly increase the information capacity of optical communication systems due to their orthogonality. Since, both cavity tuning and optical communication applications benefit from a machine vision determination of HG modes, convolution neural networks were implemented to detect the lowest twenty-one unique HG modes with an accuracy greater than 99%. As the effectiveness of a CNN is dependent on the diversity of its training data, extensive simulated and experimental datasets were created for training, validation and testing.

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