10:45 AM - 12:15 PM
[MGI31-P05] Heavy Snow Cloud Detection in Satellite Images Based on Semi-Supervised Image Segmentation
Keywords:Machine Learning, Image Segmentation, Satelite Cloud Images, Semi-Supervised Learning, Supervised Learning
In this work, we used an image segmentation method based on a semi-supervised binary classification to detect heavy snow clouds from satellite images automatically. Also, we adopted supervised classification as a baseline method to verify that the method based on semi-supervised learning is useful. In this experiment, we utilized satellite images from AVHRR (The Advanced Very High-Resolution Radiometer) on the NOAA-18,19 satellites. We used CoSPA (Cost-effective Segmentation with Partial Annotations)[1], an image segmentation technology based on semi-supervised learning. The feature of CoSPA is that it uses partial annotations which cut off from the original satellite images. Besides, for the baseline experiment, we adopted U-Net[2] for the baseline experiment, an encoder-decoder model based on supervised learning. For the dataset, we applied the cloud images observed in 2008 by the AVHRR on the NOAA-18 and NOAA-19 satellites[3]. The Jacquard index (Intersection over Unions, IoU) and the Dice Coefficient is the evaluation method to evaluate the results from the above experiments.
[1] Keiichi Nakanishi, Ryoya Katafuchi, Terumasa Tokunaga, “ CoSPA: Cost-effective Image Segmentation from Partial Annotations based on deep PNU learning ”. in preparation
[2] Ronneberger, Olaf, Philipp Fischer, and Thomas Brox. "U-net: Convolutional networks for biomedical image segmentation." Medical Image Computing and Computer-Assisted Intervention–MICCAI 2015: 18th International Conference, Munich, Germany, October 5-9, 2015, Proceedings, Part III 18. Springer International Publishing, 2015.
[3] Suzuki, Kazue, et al. "Identifying Snowfall Clouds at Syowa Station, Antarctica via a Convolutional Neural Network." Advances in Artificial Intelligence: Selected Papers from the Annual Conference of Japanese Society of Artificial Intelligence (JSAI 2020) 34. Springer International Publishing, 2021.