Affiliation:
1. The Johannesburg Lightning Research Laboratory, School of Electrical and Information Engineering, University of the Witwatersrand, Johannesburg 2000, South Africa
2. ZTResearch, Rapid City, SD 57701, USA
Abstract
We present a novel deep learning approach to a unique image processing application: high-speed (>1000 fps) video footage of lightning. High-speed cameras enable us to observe lightning with microsecond resolution, characterizing key processes previously analyzed manually. We evaluate different semantic segmentation networks (DeepLab3+, SegNet, FCN8s, U-Net, and AlexNet) and provide a detailed explanation of the image processing methods for this unique imagery. Our system architecture includes an input image processing stage, a segmentation network stage, and a sequence classification stage. The ground-truth data consists of high-speed videos of lightning filmed in South Africa, totaling 48,381 labeled frames. DeepLab3+ performed the best (93–95% accuracy), followed by SegNet (92–95% accuracy) and FCN8s (89–90% accuracy). AlexNet and U-Net achieved below 80% accuracy. Full sequence classification was 48.1% and stroke classification was 74.1%, due to the linear dependence on the segmentation. We recommend utilizing exposure metadata to improve noise misclassifications and extending CNNs to use tapped gates with temporal memory. This work introduces a novel deep learning application to lightning imagery and is one of the first studies on high-speed video footage using deep learning.
Funder
National Research Foundation of South Africa
Johannesburg Lightning Research Laboratory
Reference63 articles.
1. Fifteen years’ data of lightning current measurements on a 60 m mast;Geldenhuys;Trans. S. Afr. Inst. Electr. Eng.,1989
2. Some Parameters of Negative Upward-Initiated Lightning to the Gaisberg Tower (2000–2007);Diendorfer;IEEE Trans. Electromagn. Compat.,2009
3. Rakov, V.A., and Uman, M.A. (2003). Lightning Physics and Effects, Cambridge University Press.
4. Saba, M., Ballarotti, M., and Pinto, O. (2006). Negative cloud-to-ground lightning properties from high-speed video observations. J. Geophys. Res. Atmos., 111.
5. Saba, M., Schulz, W., Warner, T., Campos, L., Orville, R., Krider, E., Cummins, K., and Schumann, C. (2010). High-speed video observations of positive lightning flashes. J. Geophys. Res. Atmos., 115.