UAV-based Visual Remote Sensing for Automated Building Inspection

Unmanned Aerial Vehicle (UAV) based remote sensing system incorporated with computer vision has demonstrated potential for assisting building construction and in disaster management like damage assessment during earthquakes. The vulnerability of a building to earthquake can be assessed through inspe...

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Veröffentlicht in:arXiv.org 2022-09
Hauptverfasser: Srivastava, Kushagra, Patel, Dhruv, Jha, Aditya Kumar, Jha, Mohhit Kumar, Singh, Jaskirat, Sarvadevabhatla, Ravi Kiran, Ramancharla, Pradeep Kumar, Kandath, Harikumar, K Madhava Krishna
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creator Srivastava, Kushagra
Patel, Dhruv
Jha, Aditya Kumar
Jha, Mohhit Kumar
Singh, Jaskirat
Sarvadevabhatla, Ravi Kiran
Ramancharla, Pradeep Kumar
Kandath, Harikumar
K Madhava Krishna
description Unmanned Aerial Vehicle (UAV) based remote sensing system incorporated with computer vision has demonstrated potential for assisting building construction and in disaster management like damage assessment during earthquakes. The vulnerability of a building to earthquake can be assessed through inspection that takes into account the expected damage progression of the associated component and the component's contribution to structural system performance. Most of these inspections are done manually, leading to high utilization of manpower, time, and cost. This paper proposes a methodology to automate these inspections through UAV-based image data collection and a software library for post-processing that helps in estimating the seismic structural parameters. The key parameters considered here are the distances between adjacent buildings, building plan-shape, building plan area, objects on the rooftop and rooftop layout. The accuracy of the proposed methodology in estimating the above-mentioned parameters is verified through field measurements taken using a distance measuring sensor and also from the data obtained through Google Earth. Additional details and code can be accessed from https://uvrsabi.github.io/ .
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subjects Automation
Computer vision
Damage assessment
Data collection
Disaster management
Distance measurement
Earthquake damage
Earthquakes
Inspection
Parameters
Remote sensing
Remote sensing systems
Seismic response
Unmanned aerial vehicles
title UAV-based Visual Remote Sensing for Automated Building Inspection
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