Results from a study of automatic aurora classification using machine learning techniques are presented. The aurora is the manifestation of physical phenomena in the ionosphere‐magnetosphere environment. Automatic classification of millions of auroral images from the Arctic and Antarctic is therefore an attractive tool for developing auroral statistics and for supporting scientists to study auroral images in an objective, organized, and repeatable manner. Although previous studies have presented tools for detecting aurora, there has been a lack of tools for classifying aurora into subclasses with a high precision (>90%). This work considers seven auroral subclasses: breakup, colored, arcs, discrete, patchy, edge, and faint. Six different de...
Abstract This research leverages data from the Day/Night Band (DNB) of the Visible Infrared Imaging ...
In this paper we present an automatic image recognition technique used to identify clouds and aurora...
The machine-learning research community has focused greatly on bias in algorithms and have identifie...
Results from a study of automatic aurora classification using machine learning techniquesare present...
Based on their salient features we manually label 5,824 images from various Time History of Events a...
Terrestrial auroras are highly structured that visualize the perturbations of energetic particles an...
All-Sky Imagers located in the Arctic and Antarctic regions capture images of the sky at regular int...
Every year, millions of scientific images are acquired in order to study the auroral phenomena. The ...
In recent years, neural networks have been increasingly used for classifying aurora images. In parti...
We develop an open source algorithm to apply Transfer learning to Aurora image classification and Ma...
Identification of small-scale auroral structures is key to searching for auroral events. However, it...
The activity of citizen scientists who capture images of aurora borealis using digital cameras has r...
The constant flow of information by social media provides valuable information about all sorts of ev...
© 2013, Taylor & Francis. Aurora is the typical ionosphere track generated by the interaction of sol...
Modern ground-based digital auroral All-Sky Imager (ASI) networks capture millions of images annual...
Abstract This research leverages data from the Day/Night Band (DNB) of the Visible Infrared Imaging ...
In this paper we present an automatic image recognition technique used to identify clouds and aurora...
The machine-learning research community has focused greatly on bias in algorithms and have identifie...
Results from a study of automatic aurora classification using machine learning techniquesare present...
Based on their salient features we manually label 5,824 images from various Time History of Events a...
Terrestrial auroras are highly structured that visualize the perturbations of energetic particles an...
All-Sky Imagers located in the Arctic and Antarctic regions capture images of the sky at regular int...
Every year, millions of scientific images are acquired in order to study the auroral phenomena. The ...
In recent years, neural networks have been increasingly used for classifying aurora images. In parti...
We develop an open source algorithm to apply Transfer learning to Aurora image classification and Ma...
Identification of small-scale auroral structures is key to searching for auroral events. However, it...
The activity of citizen scientists who capture images of aurora borealis using digital cameras has r...
The constant flow of information by social media provides valuable information about all sorts of ev...
© 2013, Taylor & Francis. Aurora is the typical ionosphere track generated by the interaction of sol...
Modern ground-based digital auroral All-Sky Imager (ASI) networks capture millions of images annual...
Abstract This research leverages data from the Day/Night Band (DNB) of the Visible Infrared Imaging ...
In this paper we present an automatic image recognition technique used to identify clouds and aurora...
The machine-learning research community has focused greatly on bias in algorithms and have identifie...