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基于多级注意力卷积神经网络的混凝土损伤自动识别

Automatic Concrete Damage Recognition Using Multi-Level Attention Convolutional Neural Network.

作者信息

Shin Hyun Kyu, Ahn Yong Han, Lee Sang Hyo, Kim Ha Young

机构信息

Architectural Engineering, Hanyang University, ERICA, Ansan 15588, Korea.

Division of Smart Convergence Engineering, Hanyang University, ERICA, Ansan 15588, Korea.

出版信息

Materials (Basel). 2020 Dec 5;13(23):5549. doi: 10.3390/ma13235549.

Abstract

There has been an increase in the deterioration of buildings and infrastructure in dense urban regions, and several defects in the structures are being exposed. To ensure the effective diagnosis of building conditions, vision-based automatic damage recognition techniques have been developed. However, conventional image processing techniques have some limitations in real-world situations owing to their manual feature extraction approach. To overcome these limitations, a convolutional neural network-based image recognition technique was adopted in this study, and a convolution-based concrete multi-damage recognition neural network (CMDnet) was developed. The image datasets consisted of 1981 types of concrete surface damages, including surface cracks, rebar exposure and delamination, as well as intact. Furthermore, it was experimentally demonstrated that the proposed model could accurately classify the damage types. The results obtained in this study reveal that the proposed model can recognize the different damage types from digital images of the surfaces of concrete structures. The trained CMDnet demonstrated a damage-detection accuracy of 98.9%. Moreover, the proposed model could be applied in automatic damage detection networks to achieve superior performance with regard to concrete surface damage detection and recognition, as well as accelerating efficient damage identification during the diagnosis of deteriorating structures used in civil engineering applications.

摘要

在人口密集的城市地区,建筑物和基础设施的损坏情况有所增加,结构中的一些缺陷也逐渐暴露出来。为了确保对建筑状况进行有效诊断,基于视觉的自动损伤识别技术应运而生。然而,传统的图像处理技术由于采用手动特征提取方法,在实际应用中存在一些局限性。为克服这些局限,本研究采用了基于卷积神经网络的图像识别技术,并开发了一种基于卷积的混凝土多损伤识别神经网络(CMDnet)。图像数据集包含1981种混凝土表面损伤类型,包括表面裂缝、钢筋外露和分层,以及完好无损的情况。此外,实验证明所提出的模型能够准确地对损伤类型进行分类。本研究所得结果表明,所提出的模型能够从混凝土结构表面的数字图像中识别出不同的损伤类型。经过训练的CMDnet损伤检测准确率达到98.9%。此外,所提出的模型可应用于自动损伤检测网络,在混凝土表面损伤检测和识别方面表现出色,还能在土木工程应用中加速对受损结构进行诊断时的高效损伤识别。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4de5/7730712/f4a1e22525a6/materials-13-05549-g001.jpg

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