[PEM13-P14] Automatic Classification of Auroral videos based on 3D-CNN
Keywords:Machine Learning, 3D-CNN, auroral movies
There are several approaches for classifying all-sky images of aurora with handcrafted methods. The recent enhanced on the fields of computer vison and machine learning research resulted from growing the environment of information processing allows to easily develop the automatic classification of aurora images into some labeled groups. The previous researchers have proposed handcrafted classification models of snapshot aurora images with aurora shapes, color features and aurora velocity (motional differences between two aurora images), etc. They work well for the type of discrete aurora, since they have fine structure of aurora shape. Now we attempt the non-handcrafted and automatic distinction of diffuse aurora such as pulsating aurora with the supervised 3D-Convolutional Neural Network (3D-CNN) technique. We use 605 aurora all-sky imager videos (each movie has 60 frames with 1 second time resolution) to extract the feature of quasi-periodic pulsation aurora motion which is the main characteristic of pulsating aurora. The supervised learning data has two categories, 1) pulsating aurora and 2) no pulsating aurora, and we divide all videos into 8:2 for learning /evaluation processes and test process, respectively. The k-Cross Validation (k=5) resulted in higher accuracy of our model (larger than 90 %). We found the classification accuracy depends on the number of 3D-CNN filter in time direction, and our model works well on the lower number than the typical frequency of pulsating aurora.