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Transfer Learning Aurora Image Classification and Magnetic Disturbance Evaluation

机译:学习极光图像分类和转移磁干扰的评估

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摘要

We develop an open source algorithm to apply Transfer learning to Aurora image classification and Magnetic disturbance Evaluation (TAME). For this purpose, we evaluate the performance of 80 pretrained neural networks using the Oslo Auroral THEMIS (OATH) data set of all-sky images, both in terms of runtime and their features' predictive capability. From the features extracted by the best network, we retrain the last neural network layer using the Support Vector Machine (SVM) algorithm to distinguish between the labels “arc,” “diffuse,” “discrete,” “cloud,” “moon” and “clear sky/ no aurora”. This transfer learning approach yields 73% accuracy in the six classes; if we aggregate the 3 auroral and 3 non-aurora classes, we achieve up to 91% accuracy. We apply our classifier to a new dataset of 550,000 images and evaluate the classifier based on these previously unseen images. To show the potential usefulness of our feature extractor and classifier, we investigate two test cases: First, we compare our predictions for the “cloudy” images to meteorological data and second we train a linear ridge model to predict perturbations in Earth's locally measured magnetic field. We demonstrate that the classifier can be used as a filter to remove cloudy images from datasets and that the extracted features allow to predict magnetometer measurements. All procedures and algorithms used in this study are publicly available, and the code and classifier are provided, which opens possibility for large scale studies of all-sky images.
机译:我们开发一个开放源码的应用算法学习转移到极光图像分类和磁干扰评价(控制)。这个目的,我们80的性能进行评估使用奥斯陆极光pretrained神经网络忒弥斯(誓言)数据集的全天图片,都在运行时和他们特性的预测能力。最好的网络,我们训练神经网络层使用支持向量机(SVM)算法来区分标签“弧”、“扩散”、“离散”,“月亮”和“云”“晴空/不极光”。六类方法产量73%的准确率;如果我们总3极光和3 non-aurora类,我们达到91%的准确率。我们的新数据集的分类器550000的图像和评估基于这些分类器以前看不见的图像。器和有用性的特征分类器,我们研究两个测试用例:第一,我们比较预测“多云”气象数据和第二我们训练图像一个线性脊模型来预测扰动地球的本地测量磁场。分类器可以用来作为证明过滤去除多云的图像数据集和提取的功能允许预测磁强计测量。公开算法用于这项研究,和分类器的代码提供,这将大规模的可能性研究全天图像。

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