2024
DOI: 10.1109/jstars.2023.3340926
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Hyperspectral Target Detection With Target Prior Augmentation and Background Suppression-Based Multidetector Fusion

Tan Guo,
Fulin Luo,
Jiakun Guo
et al.

Abstract: Hyperspectral target detection (HTD) methods aim to exploit the abundant hyperspectral information to distinguish the key target pixels from multifarious background pixels. However, the performances of existing HTD methods are limited by the dilemmas of scarce of target prior spectra, imprecise estimation of background spectra, as well as noise pollution. For the issues, this paper proposes a novel Target prior augmentation and Background suppression-based Multi-detector Fusion (TBMF) method for HTD, based on … Show more

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Cited by 2 publications
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“…The rich spectral information helps to accurately identify these observed targets, which is beneficial to fine classification, and the image information retains the spatial distribution of the scene, providing context support for the subsequent interpretation. Therefore, hyperspectral images are increasingly and successfully applied in the fields of agriculture [1][2][3][4], ecological science [5,6], military [7][8][9][10], and atmospheric detection [11][12][13]. However, constrained by the law of conservation of energy and imaging capability of the sensors, hyperspectral data have the problems of lower spatial resolution and smaller imaging widths, universally.…”
Section: Introductionmentioning
confidence: 99%
“…The rich spectral information helps to accurately identify these observed targets, which is beneficial to fine classification, and the image information retains the spatial distribution of the scene, providing context support for the subsequent interpretation. Therefore, hyperspectral images are increasingly and successfully applied in the fields of agriculture [1][2][3][4], ecological science [5,6], military [7][8][9][10], and atmospheric detection [11][12][13]. However, constrained by the law of conservation of energy and imaging capability of the sensors, hyperspectral data have the problems of lower spatial resolution and smaller imaging widths, universally.…”
Section: Introductionmentioning
confidence: 99%