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Risley prism scanners require fast inverse mapping from screen coordinates to prism angles, yet the mapping is non-unique and unstable under non-paraxial, thick-prism conditions. This paper presents a physics-constrained mixture density network for the inverse problem of Risley prism beam steering, enabling direct prediction of both prism rotation angles from screen coordinates without paraxial assumptions or auxiliary exit-ray sensing. The model learns a multi-modal von Mises mixture and embeds a high-precision forward ray model in the loss, followed by one-step GN/LM refinement. Simulations demonstrate that, over the main region of the screen, the method achieves >94% correct-solution identification, micrometer-level reprojection RMSE, and millisecond-level inference with improved boundary and moderate-noise robustness. These results support the feasibility of the proposed method for real-time, high-precision pointing control in rotating double-prism systems.
Yan et al. (Tue,) studied this question.