Investigating the effect of non-resonant background variation on the CARS data analysis of bacteria samples and classification using machine learning
Rajendhar Junjuri,
Tobias Meyer-Zedler,
Jürgen Popp
et al.
Abstract:Non-resonant background (NRB) plays a significant role in coherent anti-Stokes Raman scattering (CARS) spectroscopic applications. All the recent works primarily focused on removing the NRB using different deep learning methods, and only one study explored the effect of NRB. Hence, in this work, we systematically investigated the impact of NRB variation on Raman signal retrieval. The NRB is simulated as a linear function with different strengths relative to the resonant Raman signal, and the variance also chan… Show more
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