RSSNet is a deep separation network that decomposes single-channel noisy Raman spectra into pure component spectra, outperforming sparse regression by over 4 dB on synthetic data and generalizing from synthetic training to real mineral powder mixtures.
Optimized signal- to-noise ratio with shot noise limited detection in stimulated raman scattering microscopy,
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A Brain-Inspired Deep Separation Network for Single Channel Raman Spectra Unmixing
RSSNet is a deep separation network that decomposes single-channel noisy Raman spectra into pure component spectra, outperforming sparse regression by over 4 dB on synthetic data and generalizing from synthetic training to real mineral powder mixtures.