HyTexiLa: High Resolution Visible and Near Infrared Hyperspectral Texture Images

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TitreHyTexiLa: High Resolution Visible and Near Infrared Hyperspectral Texture Images
Type de publicationJournal Article
Year of Publication2018
AuteursKhan HAhmad, Mihoubi S, Mathon B, Thomas J-B, Hardeberg JYngve
JournalSENSORS
Volume18
Pagination2045
Date PublishedJUL
Type of ArticleArticle
Mots-clésDataset, effective dimension, hyperspectral image, Reflectance, spectral analysis, spectral LBP, Texture
Résumé

We present a dataset of close range hyperspectral images of materials that span the visible and near infrared spectrums: HyTexiLa (Hyperspectral Texture images acquired in Laboratory). The data is intended to provide high spectral and spatial resolution reflectance images of 112 materials to study spatial and spectral textures. In this paper we discuss the calibration of the data and the method for addressing the distortions during image acquisition. We provide a spectral analysis based on non-negative matrix factorization to quantify the spectral complexity of the samples and extend local binary pattern operators to the hyperspectral texture analysis. The results demonstrate that although the spectral complexity of each of the textures is generally low, increasing the number of bands permits better texture classification, with the opponent band local binary pattern feature giving the best performance.

DOI10.3390/s18072045