# Towards fully automated post-event data collection and analysis:   pre-event and post-event information fusion

**Authors:** Ali Lenjani, Shirley J. Dyke, Ilias Bilionis, Chul Min Yeum, Kenzo, Kamiya, Jongseong Choi, Xiaoyu Liu, Arindam G. Chowdhury

arXiv: 1907.05285 · 2019-07-12

## TL;DR

This paper presents an automated method using CNNs and probabilistic fusion to rapidly assess building damage from post-event images, enhancing post-disaster reconnaissance efficiency.

## Contribution

It introduces a novel integrated approach combining pre- and post-event image analysis with probabilistic data fusion for building damage assessment.

## Key findings

- Validated on images from hurricanes Harvey and Irma
- Demonstrated improved speed and reliability in damage classification
- Achieved robust decision-making through multi-image fusion

## Abstract

In post-event reconnaissance missions, engineers and researchers collect perishable information about damaged buildings in the affected geographical region to learn from the consequences of the event. A typical post-event reconnaissance mission is conducted by first doing a preliminary survey, followed by a detailed survey. The preliminary survey is typically conducted by driving slowly along a pre-determined route, observing the damage, and noting where further detailed data should be collected. This involves several manual, time-consuming steps that can be accelerated by exploiting recent advances in computer vision and artificial intelligence. The objective of this work is to develop and validate an automated technique to support post-event reconnaissance teams in the rapid collection of reliable and sufficiently comprehensive data, for planning the detailed survey. The technique incorporates several methods designed to automate the process of categorizing buildings based on their key physical attributes, and rapidly assessing their post-event structural condition. It is divided into pre-event and post-event streams, each intending to first extract all possible information about the target buildings using both pre-event and post-event images. Algorithms based on convolutional neural network (CNNs) are implemented for scene (image) classification. A probabilistic approach is developed to fuse the results obtained from analyzing several images to yield a robust decision regarding the attributes and condition of a target building. We validate the technique using post-event images captured during reconnaissance missions that took place after hurricanes Harvey and Irma. The validation data were collected by a structural wind and coastal engineering reconnaissance team, the National Science Foundation (NSF) funded Structural Extreme Events Reconnaissance (StEER) Network.

## Full text

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## Figures

35 figures with captions in the complete paper: https://tomesphere.com/paper/1907.05285/full.md

## References

34 references — full list in the complete paper: https://tomesphere.com/paper/1907.05285/full.md

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Source: https://tomesphere.com/paper/1907.05285