LGAO-PHGEO-PHMLOct 20, 2019

Predicting ice flow using machine learning

arXiv:1910.08922v1
AI Analysis

This addresses climate change monitoring and risk management for floods and freshwater resources, though it represents an incremental application of existing ML methods to a new domain.

The paper tackles the problem of tracking ice flow in satellite images by applying unsupervised future frame prediction techniques, showing that adversarial learning improves optical flow tracking accuracy compared to existing climate science methods.

Though machine learning has achieved notable success in modeling sequential and spatial data for speech recognition and in computer vision, applications to remote sensing and climate science problems are seldom considered. In this paper, we demonstrate techniques from unsupervised learning of future video frame prediction, to increase the accuracy of ice flow tracking in multi-spectral satellite images. As the volume of cryosphere data increases in coming years, this is an interesting and important opportunity for machine learning to address a global challenge for climate change, risk management from floods, and conserving freshwater resources. Future frame prediction of ice melt and tracking the optical flow of ice dynamics presents modeling difficulties, due to uncertainties in global temperature increase, changing precipitation patterns, occlusion from cloud cover, rapid melting and glacier retreat due to black carbon aerosol deposition, from wildfires or human fossil emissions. We show the adversarial learning method helps improve the accuracy of tracking the optical flow of ice dynamics compared to existing methods in climate science. We present a dataset, IceNet, to encourage machine learning research and to help facilitate further applications in the areas of cryospheric science and climate change.

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