2021
DOI: 10.1109/jstars.2021.3094197
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A Label Similarity Probability Filter for Hyperspectral Image Postclassification

Abstract: This paper presents a Label Similarity Probability Filter (LSPF) to make hyperspectral image post-classification. The LSPF is inspired from the first law of geography and proposes a class label probability function to quantify the probability of both centered and its neighboring pixels in belonging to the same class. It first classifies the hyperspectral data using the regular support vector machine classifier. Then, it binarizes the posterior classification result to obtain the binary label maps of each class… Show more

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Cited by 14 publications
(1 citation statement)
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“…The ZY1-02D satellite, launched on September 12, 2019, is the first self-built commercial hyperspectral satellite in China [42]. It can be utilized to large-scale observation and quantitative remote sensing missions with high spectral resolution and medium spatial resolution.…”
Section: A the Zy1-02d Hyperspectral Datamentioning
confidence: 99%
“…The ZY1-02D satellite, launched on September 12, 2019, is the first self-built commercial hyperspectral satellite in China [42]. It can be utilized to large-scale observation and quantitative remote sensing missions with high spectral resolution and medium spatial resolution.…”
Section: A the Zy1-02d Hyperspectral Datamentioning
confidence: 99%