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  5. Neural Networks for Hyperspectral Imaging of Historical Paintings: A Practical Review

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Article
English
2023

Neural Networks for Hyperspectral Imaging of Historical Paintings: A Practical Review

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English
2023
Sensors
Vol 23 (5)
DOI: 10.3390/s23052419

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Silvia Mirri
Silvia Mirri

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Lingxi Liu
Tsveta Miteva
Giovanni Delnevo
+4 more

Abstract

Hyperspectral imaging (HSI) has become widely used in cultural heritage (CH). This very efficient method for artwork analysis is connected with the generation of large amounts of spectral data. The effective processing of such heavy spectral datasets remains an active research area. Along with the firmly established statistical and multivariate analysis methods, neural networks (NNs) represent a promising alternative in the field of CH. Over the last five years, the application of NNs for pigment identification and classification based on HSI datasets has drastically expanded due to the flexibility of the types of data they can process, and their superior ability to extract structures contained in the raw spectral data. This review provides an exhaustive analysis of the literature related to NNs applied for HSI data in the CH field. We outline the existing data processing workflows and propose a comprehensive comparison of the applications and limitations of the various input dataset preparation methods and NN architectures. By leveraging NN strategies in CH, the paper contributes to a wider and more systematic application of this novel data analysis method.

How to cite this publication

Lingxi Liu, Tsveta Miteva, Giovanni Delnevo, Silvia Mirri, Philippe Walter, Laurence de Viguerie, Émeline Pouyet (2023). Neural Networks for Hyperspectral Imaging of Historical Paintings: A Practical Review. Sensors, 23(5), pp. 2419-2419, DOI: 10.3390/s23052419.

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Publication Details

Type

Article

Year

2023

Authors

7

Datasets

0

Total Files

0

Language

English

Journal

Sensors

DOI

10.3390/s23052419

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