A Brain-Inspired Deep Separation Network for Single Channel Raman Spectra Unmixing
Gaoruishu Long, Jinchao Liu, Bo Liu, Jie Liu, Xiaolin Hu

TL;DR
This paper introduces RSSNet, a deep neural network inspired by speech separation, capable of unmixing single-channel noisy Raman spectra into individual components, outperforming existing methods and generalizing well to real-world data.
Contribution
The paper presents a novel deep separation neural network for single-channel Raman spectra unmixing, addressing noise tolerance and underdetermined systems, with demonstrated superiority over existing methods.
Findings
RSSNet outperforms competing methods by over 4dB on synthetic datasets.
RSSNet trained on synthetic data successfully unmixes real-world spectra.
The approach enables fast detection of Raman mixtures in practical applications.
Abstract
Raman spectra obtained in real world applications are often a noisy combination of several spectra of various substances in a tested sample. Unmixing such spectra into individual components corresponding to each of the substances is of great value and has been a longstanding challenge in Raman spectroscopy. Existing unmixing methods are predominantly designed to invert an overdetermined mixed model and therefore require multiple mixed spectra as input. However, open domain and/or non-cooperative detection applications in Raman spectroscopy such as controlled substance detection, call for single-channel solutions which can identify individual components from thousands of candidates by analyzing only a single noisy mixed spectrum. To our knowledge, sparse regression is the only existing solution which can cope with this scenario, yet it has very low tolerance to noises and can hardly be…
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