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Published December 11, 2017 | Version v1
Conference paper Open

River segmentation for flood monitoring

  • 1. AnsuR Technologies
  • 2. Istituto Superiore Mario Boella

Description

Floods are major natural disasters which cause deaths and material damages every year. Monitoring these events is crucial in order to reduce both the affected people and the economic losses. In this work we train and test three different Deep Learning segmentation algorithms to estimate the water area from river images, and compare their
performances. We discuss the implementation of a novel data chain aimed to monitor river water levels by automatically process data collected from surveillance cameras, and to give alerts in case of high increases of the water level or flooding.

We also create and openly publish the first image dataset for river water segmentation.

Notes

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Additional details

Funding

I-REACT – Improving Resilience to Emergencies through Advanced Cyber Technologies 700256
European Commission