Litcius/Paper detail

Estimation Method for Roof‐damaged Buildings from Aero-Photo Images During Earthquakes Using Deep Learning

Shono Fujita, Michinori Hatayama

2021Information Systems Frontiers18 citationsDOIOpen Access PDF

Abstract

Abstract Issuing a disaster certificate, which is used to decide the contents of a victim’s support, requires accuracy and rapidity. However, in Japan at large, issuing of damage certificates has taken a long time in past earthquake disasters. Hence, the government needs a more efficient mechanism for issuing damage certificates. This study developed an estimation system of roof-damaged buildings to obtain an overview of earthquake damage based on aero-photo images using deep learning. To provide speedy estimation, this system utilized the trimming algorithm, which automatically generates roof image data using the location information of building polygons on GIS (Geographic Information System). Consequently, the proposed system can estimate, if a house is covered with a blue sheet with 97.57 % accuracy and also detect whether a house is damaged, with 93.51 % accuracy. It would therefore be worth considering the development of an image recognition model and a method of collecting aero-photo data to operate this system during a real earthquake.

Topics & Concepts

Computer scienceRoofTrimmingCertificateGeographic information systemArtificial intelligenceData miningCivil engineeringGeologyRemote sensingEngineeringOperating systemAlgorithmRemote-Sensing Image ClassificationRemote Sensing and LiDAR ApplicationsFlood Risk Assessment and Management