2012
DOI: 10.1029/2012sw000780
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Solar thematic maps for space weather operations

Abstract: Thematic maps are arrays of labels, or “themes,” associated with discrete locations in space and time. Borrowing heavily from the terrestrial remote sensing discipline, a numerical technique based on Bayes' theorem captures operational expertise in the form of trained theme statistics, then uses this to automatically assign labels to solar image pixels. Ultimately, regular thematic maps of the solar corona will be generated from high‐cadence, high‐resolution SUVI images, the solar ultraviolet imager slated to … Show more

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Cited by 10 publications
(17 citation statements)
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“…This allows estimating the PDF p(I(x)|C i ) for each class C i . Often, a parametric PDF is assumed and its parameters are estimated via ML (Turmon et al 2002;Dudok de Wit 2006;Rigler et al 2012;. In this work, motivated by the noise statistics analysis of Section 3.1, and in order to be as general as possible, we estimate these PDFs using a nonparametric kernel density estimator.…”
Section: Maximum Likelihood Classifiermentioning
confidence: 99%
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“…This allows estimating the PDF p(I(x)|C i ) for each class C i . Often, a parametric PDF is assumed and its parameters are estimated via ML (Turmon et al 2002;Dudok de Wit 2006;Rigler et al 2012;. In this work, motivated by the noise statistics analysis of Section 3.1, and in order to be as general as possible, we estimate these PDFs using a nonparametric kernel density estimator.…”
Section: Maximum Likelihood Classifiermentioning
confidence: 99%
“…In our case, the test dataset is constituted of new manually segmented images. While Rigler et al (2012) studied the effect of having different experts specify the training and the test segmentation masks, in this work the test masks were created by the same person who made the initial training mask in order to avoid personal biases from influencing the results. Note that they still do not provide an ideal ground truth since these manual segmentations may contain errors themselves.…”
Section: Validation Using a Test Datasetmentioning
confidence: 99%
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