Chengcai Jiang, Tai Chen, Wen Yang, Long Ma, Tong Wang, Chunxiao Cai
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引用次数: 0
Abstract
Higher-order Hermite–Gaussian modes, characterized by their intricate spatial distribution, are garnering significant interest in domains such as precision measurement and optical communication. This paper introduces a beam shaping method that integrates the Gerchberg–Saxton algorithm with a convolutional neural network to generate the higher-order modes. Employing this approach, we successfully generated various orders of Hermite–Gaussian modes and light fields with arbitrary intensity distribution. Furthermore, a comparative assessment was undertaken, contrasting the root mean square error of the generated modes against those obtained via the Gerchberg–Saxton algorithm. The results demonstrated that our method yields a closer match between the generated and target light fields, translating to superior beam quality. This study not only enhances the theoretical underpinnings of beam shaping technology but also opens up new avenues for the application of neural networks in optics.
期刊介绍:
Features publication of experimental and theoretical investigations in applied physics
Offers invited reviews in addition to regular papers
Coverage includes laser physics, linear and nonlinear optics, ultrafast phenomena, photonic devices, optical and laser materials, quantum optics, laser spectroscopy of atoms, molecules and clusters, and more
94% of authors who answered a survey reported that they would definitely publish or probably publish in the journal again
Publishing essential research results in two of the most important areas of applied physics, both Applied Physics sections figure among the top most cited journals in this field.
In addition to regular papers Applied Physics B: Lasers and Optics features invited reviews. Fields of topical interest are covered by feature issues. The journal also includes a rapid communication section for the speedy publication of important and particularly interesting results.