Brain-inspired unsupervised multimodal learning method for fast motion measurement by self-mixing interferometry
About the project
Research at the LEAT has demonstrated how the fusion of sensory modalities can enhance the quality of signal classification or reconstruction in noisy environments by using brain-inspired learning methods. These methods are particularly well-suited to applications in optical feedback interferometry, a nonlinear optical measurement technique with a broad range of detection applications. However, its practical use remains challenging due to the complex data analysis it requires and its sensitivity to tiny variations in the target's reflectivity. Recent research conducted at INPHYNI has shown that, while a convolutional neural network can largely address the first issue, it cannot resolve the second. Leveraging the expertise of both teams, we will develop bio-inspired multimodal learning methods in the context of a sub-micrometer displacement measurement system based on optical feedback interferometry modalities.
- Principal investigator
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- Laurent Rodriguez, LEAT, Université Côte d’Azur, CNRS UMR7248
- Project's partners
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- Stéphane Barland, INPHYNI, Université Côte d’Azur, CNRS UMR7010
- Gian Luca LIPPI, INPHYNI, Université Côte d’Azur, CNRS UMR7010
- Benoît Miramond, LEAT, Université Côte d’Azur, CNRS UMR724
- Duration
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- June 2023 - December 2025
- Postdoc from November 2024 to October 2025
- Total Amount
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- 75 000 euros