CVMar 1, 2016

Storm Detection by Visual Learning Using Satellite Images

arXiv:1603.00146v113 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the need for better storm forecasts to reduce damage and loss of life, but it appears incremental as it builds on existing visual pattern analysis methods in meteorology.

The paper tackles the problem of unreliable detailed storm forecasts by proposing a computer algorithm that analyzes satellite images to locate visual signatures of severe thunderstorms for short-term predictions, demonstrating its usefulness and potential for more accurate forecasts.

Computers are widely utilized in today's weather forecasting as a powerful tool to leverage an enormous amount of data. Yet, despite the availability of such data, current techniques often fall short of producing reliable detailed storm forecasts. Each year severe thunderstorms cause significant damage and loss of life, some of which could be avoided if better forecasts were available. We propose a computer algorithm that analyzes satellite images from historical archives to locate visual signatures of severe thunderstorms for short-term predictions. While computers are involved in weather forecasts to solve numerical models based on sensory data, they are less competent in forecasting based on visual patterns from satellite images. In our system, we extract and summarize important visual storm evidence from satellite image sequences in the way that meteorologists interpret the images. In particular, the algorithm extracts and fits local cloud motion from image sequences to model the storm-related cloud patches. Image data from the year 2008 have been adopted to train the model, and historical thunderstorm reports in continental US from 2000 through 2013 have been used as the ground-truth and priors in the modeling process. Experiments demonstrate the usefulness and potential of the algorithm for producing more accurate thunderstorm forecasts.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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