To address the mounting destruction caused by floods in climate-vulnerable regions, we propose Street to Cloud, a machine learning pipeline for incorporating crowdsourced ground truth data into the segmentation of satellite imagery of floods. We propose this approach as a solution to the labor-intensive task of generating high-quality, hand-labeled training data, and demonstrate successes and failures of different plausible crowdsourcing approaches in our model. Street to Cloud leverages community reporting and machine learning to generate novel, near-real time insights into the extent of floods to be used for emergency response.
@article{arxiv.2011.08010,
title = {Street to Cloud: Improving Flood Maps With Crowdsourcing and Semantic Segmentation},
author = {Veda Sunkara and Matthew Purri and Bertrand Le Saux and Jennifer Adams},
journal= {arXiv preprint arXiv:2011.08010},
year = {2020}
}
Comments
5 pages, 2 figures, Tackling Climate Change with Machine Learning workshop at NeurIPS 2020