Assessing Post-Disaster Damage from Satellite Imagery using
Semi-Supervised Learning Techniques
- URL: http://arxiv.org/abs/2011.14004v1
- Date: Tue, 24 Nov 2020 22:26:14 GMT
- Title: Assessing Post-Disaster Damage from Satellite Imagery using
Semi-Supervised Learning Techniques
- Authors: Jihyeon Lee, Joseph Z. Xu, Kihyuk Sohn, Wenhan Lu, David Berthelot,
Izzeddin Gur, Pranav Khaitan, Ke-Wei (Fiona) Huang, Kyriacos Koupparis,
Bernhard Kowatsch
- Abstract summary: This paper shows a novel application of semi-supervised learning (SSL) to train models for damage assessment.
We compare the performance of state-of-the-art SSL methods, including MixMatch and FixMatch, to a supervised baseline for the 2010 Haiti earthquake, 2017 Santa Rosa wildfire, and 2016 armed conflict in Syria.
We show how models trained with SSL methods can reach fully supervised performance despite using only a fraction of labeled data.
- Score: 15.264481724699456
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: To respond to disasters such as earthquakes, wildfires, and armed conflicts,
humanitarian organizations require accurate and timely data in the form of
damage assessments, which indicate what buildings and population centers have
been most affected. Recent research combines machine learning with remote
sensing to automatically extract such information from satellite imagery,
reducing manual labor and turn-around time. A major impediment to using machine
learning methods in real disaster response scenarios is the difficulty of
obtaining a sufficient amount of labeled data to train a model for an unfolding
disaster. This paper shows a novel application of semi-supervised learning
(SSL) to train models for damage assessment with a minimal amount of labeled
data and large amount of unlabeled data. We compare the performance of
state-of-the-art SSL methods, including MixMatch and FixMatch, to a supervised
baseline for the 2010 Haiti earthquake, 2017 Santa Rosa wildfire, and 2016
armed conflict in Syria. We show how models trained with SSL methods can reach
fully supervised performance despite using only a fraction of labeled data and
identify areas for further improvements.
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