2022
DOI: 10.3390/rs14153644
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Dual-Branch-AttentionNet: A Novel Deep-Learning-Based Spatial-Spectral Attention Methodology for Hyperspectral Data Analysis

Abstract: Recently, deep learning-based classification approaches have made great progress and now dominate a wide range of applications, thanks to their Herculean discriminative feature learning ability. Despite their success, for hyperspectral data analysis, these deep learning based techniques tend to suffer computationally as the magnitude of the data soars. This is mainly because the hyperspectral imagery (HSI) data are multidimensional, as well as giving equal importance to the large amount of temporal and spatial… Show more

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Cited by 5 publications
(1 citation statement)
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“…Many studies have reported that abundant, diverse, and well-proportioned samples can significantly improve the efficiency of models in spectroscopic analysis, both qualitatively and quantitatively [1][2]. Moreover, with the emergence of the big data era, deep learning (DL) algorithms have been widely applied to spectral analysis, posing a greater challenge to the number of spectral samples due to the data sensitivity of these algorithms [3][4][5].…”
Section: Introductionmentioning
confidence: 99%
“…Many studies have reported that abundant, diverse, and well-proportioned samples can significantly improve the efficiency of models in spectroscopic analysis, both qualitatively and quantitatively [1][2]. Moreover, with the emergence of the big data era, deep learning (DL) algorithms have been widely applied to spectral analysis, posing a greater challenge to the number of spectral samples due to the data sensitivity of these algorithms [3][4][5].…”
Section: Introductionmentioning
confidence: 99%