Cogent Engineering (Dec 2022)

Automated building classification framework using convolutional neural network

  • Augusta Adha,
  • Arya Pamuncak,
  • Wen Qiao,
  • Irwanda Laory

DOI
https://doi.org/10.1080/23311916.2022.2065900
Journal volume & issue
Vol. 9, no. 1

Abstract

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Despite extensive study, performing Rapid visual screening is still a challenging task for many countries. The challenges include the lack of trained engineers, limited resources, and a large building inventory to detect. One of the most important aspect in rapid visual screening is to establish the building classification based on the guidelines’ specific criteria. This study proposes a general framework based on Convolutional Neural Network to perform automated building classification for the rapid visual screening procedure. The method classifies buildings based on the Federal Emergency Management Agency (FEMA)-154 guidelines and uses transfer learning techniques from a pre-trained network. The Indonesian building portfolio is used as a case study and a dataset of building images generated through web-scraping on Google Search™ engines and Google StreetView™ website is used for the method validation. Results show that the proposed framework has promising potential to automate the building classification based on FEMA-154 guidelines.

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