Fast reconstruction of programmable interferometers with intensity-only
measurements
- URL: http://arxiv.org/abs/2401.06093v1
- Date: Thu, 11 Jan 2024 18:16:38 GMT
- Title: Fast reconstruction of programmable interferometers with intensity-only
measurements
- Authors: B. I. Bantysh, A. Yu. Chernyavskiy, S. A. Fldzhyan, Yu. I. Bogdanov
- Abstract summary: Linear optical interferometers are promising for classical and quantum applications.
To use them in practice, one has to reconstruct the whole device model taking the manufacturing errors into account.
We show that it performs slightly worse than the original fast algorithm but it is more practical and still does not require intensive numerical optimization.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Programmable linear optical interferometers are promising for classical and
quantum applications. Their integrated design makes it possible to create more
scalable and stable devices. To use them in practice, one has to reconstruct
the whole device model taking the manufacturing errors into account. The
inability to address individual interferometer elements complicates the
reconstruction problem. A naive approach is to train the model via some complex
optimization procedure. A faster optimization-free algorithm has been recently
proposed [Opt. Express 31, 16729 (2023)]. However, it requires the full
transfer matrix tomography while a more practical setup measures only the
fields intensities at the interferometer output. In this paper, we propose the
modification of the fast algorithm, which uses additional set of interferometer
configurations in order to reconstruct the model in the case of intensity-only
measurements. We show that it performs slightly worse than the original fast
algorithm but it is more practical and still does not require intensive
numerical optimization.
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