2019
DOI: 10.1061/(asce)cf.1943-5509.0001253
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Postevent Reconnaissance Image Documentation Using Automated Classification

Abstract: Reconnaissance teams are charged with collecting perishable data after a natural disaster. In the field, these engineers typically record their observations through images. Each team takes many views of both exterior and interior buildings and frequently collects associated metadata that reflect information represented in images, such as global positioning system (GPS) devices, structural drawings, timestamp, and measurements. Large quantities of images with a wide variety of contents are collected. The window… Show more

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Cited by 29 publications
(27 citation statements)
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“…CNNs have been successfully applied in civil engineering applications for image classifications. These include metal surface defects detection (Soukup & Huber-Mörk, 2014), post-disaster collapse classification (Yeum, Dyke, Ramirez, & Benes, 2016), joint damage detection through a onedimensional CNN (Abdeljaber, Avci, Kiranyaz, Gabbouj, & Inman, 2017), concrete crack detection using a sliding window technique (Cha, Choi, & Büyüköztürk, 2017), pavement crack detection (Zhang et al, 2017;Vetrivel, Gerke, Kerle, Nex, & Vosselman, 2018), structural damage detection with feature extracted from low-level sensor data (Lin, Nie, & Ma, 2017), structural damage classification with the proposal of Structural ImageNet (Gao & Mosalam, 2018). Apart from the CNN-based classification, other powerful classification algorithms such as Enhanced Probabilistic Neural Network with Local Decision Circles (EPNN) and the new Neural Dynamic Classification (NDC) were successfully developed in recent years (Ahmadlou & Adeli, 2010;Rafiei & Adeli, 2017).…”
Section: Introductionmentioning
confidence: 99%
“…CNNs have been successfully applied in civil engineering applications for image classifications. These include metal surface defects detection (Soukup & Huber-Mörk, 2014), post-disaster collapse classification (Yeum, Dyke, Ramirez, & Benes, 2016), joint damage detection through a onedimensional CNN (Abdeljaber, Avci, Kiranyaz, Gabbouj, & Inman, 2017), concrete crack detection using a sliding window technique (Cha, Choi, & Büyüköztürk, 2017), pavement crack detection (Zhang et al, 2017;Vetrivel, Gerke, Kerle, Nex, & Vosselman, 2018), structural damage detection with feature extracted from low-level sensor data (Lin, Nie, & Ma, 2017), structural damage classification with the proposal of Structural ImageNet (Gao & Mosalam, 2018). Apart from the CNN-based classification, other powerful classification algorithms such as Enhanced Probabilistic Neural Network with Local Decision Circles (EPNN) and the new Neural Dynamic Classification (NDC) were successfully developed in recent years (Ahmadlou & Adeli, 2010;Rafiei & Adeli, 2017).…”
Section: Introductionmentioning
confidence: 99%
“…Automating some of the procedures associated with building damage surveys will enable reconnaissance teams to more rapidly gather and analyze these large volumes of perishable information. Recent demonstrations of automation include scene recognition and object detection with large volumes of images collected after an event by exploiting new developments in convolutional neural networks (CNNs) [2,11,32,33]. These techniques, which fall into the broad category of artificial intelligence, are gaining traction.…”
Section: Introductionmentioning
confidence: 99%
“…The simplest way to resolve scale is to capture images by a reference object of known dimension (e.g., pen, ruler, paper; Yeum, Dyke et al., 2019). Hence, if the inspection area and reference object are present on the same plane, scale may be resolved using a simple pixel to length relationship.…”
Section: Introductionmentioning
confidence: 99%