This AI Paper Presents A Deep Learning Framework To Accurately Identify The Mineral Compounds From Their Raman Spectra

Specific optical methods, including Fourier-transform infrared (FTIR), Brillouin scattering, and Raman spectroscopy, are used in vibrational spectroscopy. Classification models can convert input items (spectra) into the necessary outputs for data from vibrational spectroscopy (class assignments). It isn’t easy to create such a classification tool, but it would benefit many industries, including semiconductors, pharmaceuticals, polymers, forensics, environmental and food sciences, and medicine. Additionally, vibrational spectroscopy data frequently need different and complicated pre-processing processes before chemometric measurements. The robustness and accuracy of future multivariate analyses are enhanced, and the data’s interpretability is increased by a variety of data pre-processing techniques that make allowances for the difficulties of spectral data gathering.

Raman spectroscopy is now widely used in various sectors because of recent improvements in equipment development and the development of more powerful computing resources and software. These fragile expert-guided pre-processing pipelines are founded on empirical data. Pre-processing techniques, however, might differ significantly depending on the approach and the study’s goal or are frequently proprietary. As a result, a pre-processing method that increases the performance of one model or material system may degrade it. The effects of a certain pre-processing method also differ significantly depending on the data sample, frequently necessitating the assistance of a qualified professional. To ensure improved generalization, it’s crucial to eliminate the unconventional expert-guided pre-processing of signals.

Clinicians are presently assisted by portable or handheld technologies in identifying unknown chemical compounds and detecting malignant cells. Raman spectroscopy involves little sample preparation and offers distinctive fingerprints for particular molecules and substances. Similarly, Raman spectroscopy may identify flaw states that significantly affect the characteristics of the material. In metal oxides, for instance, surface flaws enable anions and cations to take on a range of charge states that support photocatalysis, corrosion protection, sensors, microelectronics, magnetic recording devices, and microporous materials. Individual interpretations might be made about spectroscopy methods. Manual pre-processing may introduce human bias into the data, affecting the outcomes or how they are interpreted.

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Therefore, there is a pressing need to provide more reliable computational tools that enable users to quickly analyze the spectrum patterns in a more consistent and trustworthy (unbiased) way. One must be a highly qualified specialist to accurately identify the chemical and structural characteristics from the Raman spectroscopy readings using conventional methods. Convolutional neural networks (CNNs) have been extensively deployed to extract feature patterns from complex, high-dimensional data. However, they can lessen the demand for labor-intensive manual pre-processing by highly qualified professionals. Raman spectroscopy may detect more complex substances using more affordable (lower-resolution) devices with little to no data pretreatment thanks to automated real-time CNN models.

This paper offers a powerful deep-learning system for precise Raman spectral chemical identification. On the publicly available RRUFF Dataset, they attain a Top-1 accuracy of 99.12% and a Top-5 accuracy of 99.30% using the suggested model. They show experimental validations of their model to correctly detect both Rutile and Anatase in the synthesized samples to validate their findings. Most crucially, they offer that the suggested model can accurately identify targets without needing extra expert-guided proprietary data pre-processing. This results in increased standardization and cost efficiency.


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Aneesh Tickoo is a consulting intern at MarktechPost. He is currently pursuing his undergraduate degree in Data Science and Artificial Intelligence from the Indian Institute of Technology(IIT), Bhilai. He spends most of his time working on projects aimed at harnessing the power of machine learning. His research interest is image processing and is passionate about building solutions around it. He loves to connect with people and collaborate on interesting projects.


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