19 May 2022 Self-mixing interferometry based on a phase decomposition neural network
Junbao Chen, Xinmeng Wang, Yubao Wu, Yitao Yang, Mingyue Qiu, Ming Wang, Yuzhi Li
Author Affiliations +
Abstract

In spite of the robustness and simplicity of the self-mixing interferometry (SMI) concept, interpreting the SMI signal is often complicated in practice, which is detrimental to its measurement value. SMI based on machine learning is presented to extract the phase directly from pure SMI signals. A simple phase decomposition neural network (PDNN) was constructed to realize direct phase extraction. A special feature of the PDNN is that it can use the simulation data directly to train the model, and the trained model can be used directly for measurement. In the training process of the PDNN model, the simulated cosine-like signal and the flag signal were used as inputs, and the simulated phase was used as the label. Thus, the training set was easy to prepare, the model structure was simple, and the training speed was very fast. Experimentally, we measured targets with cosine-like movements directly using the trained model, and the results obtained were consistent with the simulation. This contributes to simplifying the signal processing of interferometry in practical engineering applications.

© 2022 Society of Photo-Optical Instrumentation Engineers (SPIE) 0091-3286/2022/$28.00 © 2022 SPIE
Junbao Chen, Xinmeng Wang, Yubao Wu, Yitao Yang, Mingyue Qiu, Ming Wang, and Yuzhi Li "Self-mixing interferometry based on a phase decomposition neural network," Optical Engineering 61(5), 054103 (19 May 2022). https://doi.org/10.1117/1.OE.61.5.054103
Received: 4 February 2022; Accepted: 3 May 2022; Published: 19 May 2022
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KEYWORDS
Data modeling

Interferometry

Neural networks

Signal processing

Electro optical modeling

Motion models

Performance modeling

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