Articles producció científica> Ciències Mèdiques Bàsiques

Robust and Unified Semi-Supervised Unmixing of Hyperspectral Imaging for Linear and Multilinear Models

  • Dades identificatives

    Identificador:  imarina:9452229
    Autors:  Campos-Delgado, Daniel Ulises; Nicolas Mendoza-Chavarria, Juan; Gutierrez-Navarro, Omar; Quintana-Quintana, Laura; Leon, Raquel; Ortega, Samuel; Fabelo, Himar; Lopez, Carlos; Lejeune, Marylene; Callico, Gustavo M
    Resum:
    The spectral unmixing paradigm is an important analysis tool for hyperspectral (HS) images which allows one to decompose the 2D spatial information from the basic spectral signatures or end-members. In this work, we introduce a semi-supervised perspective for spectral unmixing, where some end-members are known a priori, while the rest are estimated from the HS image. The proposal is relevant in unmixing scenarios where there is only available partial information of end-members, or when the known end-members are not fully representative of the scene. Our formulation simultaneously addresses linear and multilinear mixing models in a unified fashion. The proposed algorithms are referred as ESSEAE (Extended Semi-Supervised End-members and Abundance Extraction) for the linear model, and NESSEAE (Non-linear Extended Semi-Supervised End-members and Abundance Extraction) for the multilinear one. The estimation process is presented as a weighted optimal approximation problem with regularization terms for abundances, end-members and sparse noise components, which is solved by a cyclic coordinate descent optimization (CCDO) scheme. In this work, we derive closed-solutions at each step of the CCDO scheme, and just for the multilinear model, the end-members estimation involves a gradient descent scheme with optimal linear search. We validate first our contributions with synthetic HS images that include Gaussian and sparse noise components to evaluate their robustness, and compare them with supervised and unsupervised perspectives. In addition, we validated the linear scheme with a breast histological sample, and the multilinear approach with the Urban dataset. The use of two datasets from different fields guarantees the generalizability of the proposed formulation. In general, our s
  • Altres:

    Autor segons l'article: Campos-Delgado, Daniel Ulises; Nicolas Mendoza-Chavarria, Juan; Gutierrez-Navarro, Omar; Quintana-Quintana, Laura; Leon, Raquel; Ortega, Samuel; Fabelo, Himar; Lopez, Carlos; Lejeune, Marylene; Callico, Gustavo M
    Departament: Ciències Mèdiques Bàsiques
    Autor/s de la URV: Lejeune, Marylène Marie
    Paraules clau: Algorith; Approximation algorithms; End-member; Estimation; Hyperspectral imaging; Libraries; Linear unmixing; Noise; Nonlinear unmixing; Optimizatio; Optimization; Semi-supervised approach; Sparse matrices; Spatial coherence; Symmetric matrices; Vectors
    Resum: The spectral unmixing paradigm is an important analysis tool for hyperspectral (HS) images which allows one to decompose the 2D spatial information from the basic spectral signatures or end-members. In this work, we introduce a semi-supervised perspective for spectral unmixing, where some end-members are known a priori, while the rest are estimated from the HS image. The proposal is relevant in unmixing scenarios where there is only available partial information of end-members, or when the known end-members are not fully representative of the scene. Our formulation simultaneously addresses linear and multilinear mixing models in a unified fashion. The proposed algorithms are referred as ESSEAE (Extended Semi-Supervised End-members and Abundance Extraction) for the linear model, and NESSEAE (Non-linear Extended Semi-Supervised End-members and Abundance Extraction) for the multilinear one. The estimation process is presented as a weighted optimal approximation problem with regularization terms for abundances, end-members and sparse noise components, which is solved by a cyclic coordinate descent optimization (CCDO) scheme. In this work, we derive closed-solutions at each step of the CCDO scheme, and just for the multilinear model, the end-members estimation involves a gradient descent scheme with optimal linear search. We validate first our contributions with synthetic HS images that include Gaussian and sparse noise components to evaluate their robustness, and compare them with supervised and unsupervised perspectives. In addition, we validated the linear scheme with a breast histological sample, and the multilinear approach with the Urban dataset. The use of two datasets from different fields guarantees the generalizability of the proposed formulation. In general, our semi-supervised spectral unmixing schemes provide accurate and robust results with a fast computational time, and as expected, present an overall performance in between the supervised and unsupervised approaches. All scripts for the proposed algorithms are freely available in https://github.com/Nicothe4th/ESSEAE-NESSEAE.
    Àrees temàtiques: Ciência da computação; Computer science (all); Computer science (miscellaneous); Computer science, information systems; Electrical and electronic engineering; Engenharias iii; Engenharias iv; Engineering (all); Engineering (miscellaneous); Engineering, electrical & electronic; General computer science; General engineering; General materials science; Materials science (all); Materials science (miscellaneous); Telecommunications
    Accès a la llicència d'ús: https://creativecommons.org/licenses/by/3.0/es/
    Adreça de correu electrònic de l'autor: marylenemarie.lejeune@urv.cat
    Data d'alta del registre: 2025-04-30
    Versió de l'article dipositat: info:eu-repo/semantics/publishedVersion
    Enllaç font original: https://ieeexplore.ieee.org/document/10930765
    Referència a l'article segons font original: Ieee Access. 13 53140-53158
    Referència de l'ítem segons les normes APA: Campos-Delgado, Daniel Ulises; Nicolas Mendoza-Chavarria, Juan; Gutierrez-Navarro, Omar; Quintana-Quintana, Laura; Leon, Raquel; Ortega, Samuel; Fabel (2025). Robust and Unified Semi-Supervised Unmixing of Hyperspectral Imaging for Linear and Multilinear Models. Ieee Access, 13(), 53140-53158. DOI: 10.1109/ACCESS.2025.3552439
    URL Document de llicència: https://repositori.urv.cat/ca/proteccio-de-dades/
    DOI de l'article: 10.1109/ACCESS.2025.3552439
    Entitat: Universitat Rovira i Virgili
    Any de publicació de la revista: 2025
    Tipus de publicació: Journal Publications
  • Paraules clau:

    Computer Science (Miscellaneous),Computer Science, Information Systems,Engineering (Miscellaneous),Engineering, Electrical & Electronic,Materials Science (Miscellaneous),Telecommunications
    Algorith
    Approximation algorithms
    End-member
    Estimation
    Hyperspectral imaging
    Libraries
    Linear unmixing
    Noise
    Nonlinear unmixing
    Optimizatio
    Optimization
    Semi-supervised approach
    Sparse matrices
    Spatial coherence
    Symmetric matrices
    Vectors
    Ciência da computação
    Computer science (all)
    Computer science (miscellaneous)
    Computer science, information systems
    Electrical and electronic engineering
    Engenharias iii
    Engenharias iv
    Engineering (all)
    Engineering (miscellaneous)
    Engineering, electrical & electronic
    General computer science
    General engineering
    General materials science
    Materials science (all)
    Materials science (miscellaneous)
    Telecommunications
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