# Combining crowd-sourcing and deep learning to explore the meso-scale   organization of shallow convection

**Authors:** Stephan Rasp, Hauke Schulz, Sandrine Bony, Bjorn Stevens

arXiv: 1906.01906 · 2020-04-22

## TL;DR

This study combines crowd-sourcing and deep learning to analyze satellite images, identifying patterns of shallow convection organization at scale, which enhances understanding of cloud behavior and climate modeling.

## Contribution

It introduces a novel approach integrating crowd-sourcing and deep learning to classify mesoscale cloud patterns in satellite imagery.

## Key findings

- Identified four cloud organization patterns: Sugar, Flower, Fish, Gravel.
- Created a large labeled dataset of nearly 50,000 cloud clusters.
- Revealed geographical and environmental distributions of patterns.

## Abstract

Humans excel at detecting interesting patterns in images, for example those taken from satellites. This kind of anecdotal evidence can lead to the discovery of new phenomena. However, it is often difficult to gather enough data of subjective features for significant analysis. This paper presents an example of how two tools that have recently become accessible to a wide range of researchers, crowd-sourcing and deep learning, can be combined to explore satellite imagery at scale. In particular, the focus is on the organization of shallow cumulus convection in the trade wind regions. Shallow clouds play a large role in the Earth's radiation balance yet are poorly represented in climate models. For this project four subjective patterns of organization were defined: Sugar, Flower, Fish and Gravel. On cloud labeling days at two institutes, 67 scientists screened 10,000 satellite images on a crowd-sourcing platform and classified almost 50,000 mesoscale cloud clusters. This dataset is then used as a training dataset for deep learning algorithms that make it possible to automate the pattern detection and create global climatologies of the four patterns. Analysis of the geographical distribution and large-scale environmental conditions indicates that the four patterns have some overlap with established modes of organization, such as open and closed cellular convection, but also differ in important ways. The results and dataset from this project suggests promising research questions. Further, this study illustrates that crowd-sourcing and deep learning complement each other well for the exploration of image datasets.

## Full text

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## Figures

13 figures with captions in the complete paper: https://tomesphere.com/paper/1906.01906/full.md

## References

37 references — full list in the complete paper: https://tomesphere.com/paper/1906.01906/full.md

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Source: https://tomesphere.com/paper/1906.01906