Show simple item record

contributor authorXu, Chuanchang
contributor authorLai, Cass Wai Gwan
contributor authorWang, Yangchun
contributor authorHou, Jiale
contributor authorShao, Zhufeng
contributor authorCai, Enjian
contributor authorYang, Xingjian
date accessioned2024-04-24T22:45:23Z
date available2024-04-24T22:45:23Z
date copyright3/22/2024 12:00:00 AM
date issued2024
identifier issn2332-9017
identifier otherrisk_010_02_021107.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4295815
description abstractVision-based methods have shown great potential in vibration-based structural health monitoring (SHM), which can be classified as target-based and target-free methods. However, target-based methods cannot achieve subpixel accuracy, and target-free methods are sensitive to environmental effects. To this end, this paper proposed a hybrid perspective of vision-based methods for estimating structural displacements, based on Mask region-based convolutional neural networks (Mask R-CNNs). In proposed methods, Mask R-CNN is used to first locate the target region and then target-free vision-based methods are used to estimate structural displacements from the located target. The performances of proposed methods were validated in a shaking table test of a cold formed steel (CFS) wall system. It can be seen that Mask R-CNN can significantly improve the accuracy of feature point matching results of the target-free method. The comparisons of estimated structural displacements using proposed methods are conducted and detailed into accuracy, stability, and computational burden, to guide the selection of the proper proposed method for the specific problem in vibration-based SHM. Proposed methods can also achieve even 1/15 pixel-level accuracy. Moreover, different image denoising methods in different lighting conditions are compared.
publisherThe American Society of Mechanical Engineers (ASME)
titleA Hybrid Perspective of Vision-Based Methods for Estimating Structural Displacements Based on Mask Region-Based Convolutional Neural Networks
typeJournal Paper
journal volume10
journal issue2
journal titleASCE-ASME J Risk and Uncert in Engrg Sys Part B Mech Engrg
identifier doi10.1115/1.4064844
journal fristpage21107-1
journal lastpage21107-9
page9
treeASCE-ASME J Risk and Uncert in Engrg Sys Part B Mech Engrg:;2024:;volume( 010 ):;issue: 002
contenttypeFulltext


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record