Utilizing Post-Hurricane Satellite Imagery to Identify Flooding Damage
with Convolutional Neural Networks
- URL: http://arxiv.org/abs/2209.02124v1
- Date: Mon, 5 Sep 2022 20:12:39 GMT
- Title: Utilizing Post-Hurricane Satellite Imagery to Identify Flooding Damage
with Convolutional Neural Networks
- Authors: Jimmy Bao
- Abstract summary: This paper furthered the idea of implementing deep learning through convolutional neural networks in order to classify post-hurricane satellite imagery of buildings as Flooded/Damaged or Undamaged.
The experimentation was conducted employing a dataset containing post-hurricane satellite imagery from the Greater Houston area after Hurricane Harvey in 2017.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Post-hurricane damage assessment is crucial towards managing resource
allocations and executing an effective response. Traditionally, this evaluation
is performed through field reconnaissance, which is slow, hazardous, and
arduous. Instead, in this paper we furthered the idea of implementing deep
learning through convolutional neural networks in order to classify
post-hurricane satellite imagery of buildings as Flooded/Damaged or Undamaged.
The experimentation was conducted employing a dataset containing post-hurricane
satellite imagery from the Greater Houston area after Hurricane Harvey in 2017.
This paper implemented three convolutional neural network model architectures
paired with additional model considerations in order to achieve high accuracies
(over 99%), reinforcing the effective use of machine learning in post-hurricane
disaster assessment.
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