Interferobot: aligning an optical interferometer by a reinforcement learning agent
–Neural Information Processing Systems
Limitations in acquiring training data restrict potential applications of deep reinforcement learning (RL) methods to the training of real-world robots. Here we train an RL agent to align a Mach-Zehnder interferometer, which is an essential part of many optical experiments, based on images of interference fringes acquired by a monocular camera. The agent is trained in a simulated environment, without any hand-coded features or a priori information about the physics, and subsequently transferred to a physical interferometer.
Neural Information Processing Systems
Oct-10-2024, 21:12:12 GMT
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