Geomatics, Natural Hazards & Risk (Dec 2024)

Enhancing natural disaster image classification: an ensemble learning approach with inception and CNN models

  • Kashvi Ankitbhai Sheth,
  • Rujuta Prajakt Kulkarni,
  • G. K. Revathi

DOI
https://doi.org/10.1080/19475705.2024.2407029
Journal volume & issue
Vol. 15, no. 1

Abstract

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The core problem of this research is the rapid and accurate classification of natural disasters, which is essential for effective response and mitigation strategies. Existing detection methods are often time-consuming and costly. The purpose of this research is to introduce an innovative approach to the multi-class classification of natural disasters using image data from a Kaggle dataset encompassing Cyclone, Wildfire, Flood, and Earthquake incidents. The method used is an ensemble learning model that combines the strengths of the InceptionV3 model and a custom Convolutional Neural Network (CNN). The result of this study is an ensemble model that achieves a commendable accuracy of 92.79%, surpassing individual models and demonstrating the efficacy of combining diverse features extracted by InceptionV3 and CNN architectures. Additionally, a standalone CNN model is implemented, achieving an accuracy of 88.76%. The research concludes that the ensemble model’s superior performance makes it a valuable tool for the multi-class classification of natural disaster images.

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