• English
    • español
  • English 
    • English
    • español
  • Login
View Item 
  •   Home
  • 2.- Investigación
  • Artículos
  • View Item
  •   Home
  • 2.- Investigación
  • Artículos
  • View Item
JavaScript is disabled for your browser. Some features of this site may not work without it.

Raman Spectroscopy Pre-Trained Encoder: A Self-Supervised Learning Approach For Data-Efficient Domain-Independent Spectroscopy Analysis

Thumbnail
View/Open
IIT-26-066R.pdf (12.05Mb)
IIT-26-066R_preview.pdf (3.974Kb)
Date
2026-03-09
Author
Eranti, Abhiraam
Tewari, Yogesh
Palacios Hielscher, Rafael
Gupta, Amar
Estado
info:eu-repo/semantics/publishedVersion
Metadata
Show full item record
Mostrar METS del ítem
Ver registro en CKH

Refworks Export

Abstract
Deep-learning methods have boosted the analytical power of Raman spectroscopy, yet they still require large, task-specific, labeled datasets and often fail to transfer across application domains. The study explores pre-trained encoders as a solution. Pre-trained encoders have significantly impacted Natural Language Processing and Computer Vision with their ability to learn transferable representations that can be applied to a variety of datasets, significantly reducing the amount of time and data required to create capable models. The following work puts forward a new approach that applies these benefits to Raman Spectroscopy. The proposed approach, RSPTE (Raman Spectroscopy Pre-Trained Encoder), is designed to learn generalizable spectral representations without labels. RSPTE employs a novel domain adaptation strategy using unsupervised Barlow Twins decorrelation objectives to learn fundamental spectral patterns from multi-domain Raman Spectroscopy datasets containing samples from medicine, biology, and mineralogy. Transferability is demonstrated through evaluation on several models created by fine-tuning RSPTE for different application domains: Medicine (detection of Melanoma and COVID), Biology (Pathogen Identification), and Agriculture. As an example, using only 20% of the dataset, models trained with RSPTE achieve accuracies ranging 50%–86% (depending on the dataset used) while without RSPTE the range is 9%–57%. Using the full dataset, accuracies with RSPTE range 81%–97%, and without pretraining 51%–97%. Current methods and state-of-the-art models in Raman Spectroscopy are compared to RSPTE for context, and RSPTE exhibits competitive results, especially with less data as well. These results provide evidence that the proposed RSPTE model can effectively learn and transfer generalizable spectral features across different domains, achieving accurate results with less data in less time (both data collection time and training time).
 
Deep-learning methods have boosted the analytical power of Raman spectroscopy, yet they still require large, task-specific, labeled datasets and often fail to transfer across application domains. The study explores pre-trained encoders as a solution. Pre-trained encoders have significantly impacted Natural Language Processing and Computer Vision with their ability to learn transferable representations that can be applied to a variety of datasets, significantly reducing the amount of time and data required to create capable models. The following work puts forward a new approach that applies these benefits to Raman Spectroscopy. The proposed approach, RSPTE (Raman Spectroscopy Pre-Trained Encoder), is designed to learn generalizable spectral representations without labels. RSPTE employs a novel domain adaptation strategy using unsupervised Barlow Twins decorrelation objectives to learn fundamental spectral patterns from multi-domain Raman Spectroscopy datasets containing samples from medicine, biology, and mineralogy. Transferability is demonstrated through evaluation on several models created by fine-tuning RSPTE for different application domains: Medicine (detection of Melanoma and COVID), Biology (Pathogen Identification), and Agriculture. As an example, using only 20% of the dataset, models trained with RSPTE achieve accuracies ranging 50%–86% (depending on the dataset used) while without RSPTE the range is 9%–57%. Using the full dataset, accuracies with RSPTE range 81%–97%, and without pretraining 51%–97%. Current methods and state-of-the-art models in Raman Spectroscopy are compared to RSPTE for context, and RSPTE exhibits competitive results, especially with less data as well. These results provide evidence that the proposed RSPTE model can effectively learn and transfer generalizable spectral features across different domains, achieving accurate results with less data in less time (both data collection time and training time).
 
URI
https://doi.org/10.1109/ACCESS.2026.3672109
http://hdl.handle.net/11531/109102
Raman Spectroscopy Pre-Trained Encoder: A Self-Supervised Learning Approach For Data-Efficient Domain-Independent Spectroscopy Analysis
Tipo de Actividad
Artículos en revistas
ISSN
2169-3536
Materias/ categorías / ODS
Instituto de Investigación Tecnológica (IIT)
Palabras Clave
Raman Spectroscopy, self-supervised learning, pre-trained encoder, multi-domain data, clinical diagnostics
Raman Spectroscopy, self-supervised learning, pre-trained encoder, multi-domain data, clinical diagnostics
Collections
  • Artículos

Repositorio de la Universidad Pontificia Comillas copyright © 2015  Desarrollado con DSpace Software
Contact Us | Send Feedback
 

 

Búsqueda semántica (CKH Explorer)


Browse

All of DSpaceCommunities & CollectionsBy Issue DateAuthorsTitlesSubjectsxmlui.ArtifactBrowser.Navigation.browse_advisorxmlui.ArtifactBrowser.Navigation.browse_typeThis CollectionBy Issue DateAuthorsTitlesSubjectsxmlui.ArtifactBrowser.Navigation.browse_advisorxmlui.ArtifactBrowser.Navigation.browse_type

My Account

LoginRegister

Repositorio de la Universidad Pontificia Comillas copyright © 2015  Desarrollado con DSpace Software
Contact Us | Send Feedback