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Pre-Processing of Signals Observed from Laser Diode Self-mixing Intereferometries using Neural Networks

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conference contribution
posted on 2024-11-15, 19:34 authored by L Wei, Jose ChicharoJose Chicharo, Yanguang YuYanguang Yu, Jiangtao XiJiangtao Xi
This paper presents a novel neural network signal interpolation technique in order to eliminate the noise and disturbance associated with the self-mixing signal observed from optical feedback self- mixing interferometry (OFSMI). The proposed technique aims to improve the accuracy for displacement and moving track measurement of a target. The performance of the proposed approach is evaluated by both simulation and experimentation, with simulation revealing a measuring accuracy of A/25 for weak feedback and J20 for moderate feed back.

History

Citation

This conference paper was originally published as Wei, L, Chicharo, J, Yu, Y, Xi, J, Pre-Processing of Signals Observed from Laser Diode Self-mixing Intereferometries using Neural Networks, IEEE International Symposium on Intelligent Signal Processing WISP 2007, 3-5 Oct, 1-5.

Parent title

2007 IEEE International Symposium on Intelligent Signal Processing, WISP

Language

English

RIS ID

22131

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