利用无人机图像和改进型轻量级深度卷积网络自主识别桥梁混凝土裂缝

IF 4.6 2区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
Fei Song, Ying Sun, Guixia Yuan
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引用次数: 0

摘要

结构缺陷的发展识别是桥梁结构损伤诊断的重要组成部分,而裂缝被认为是最典型、危害性最大的结构病害。然而,现有的基于深度学习的方法大多针对混凝土裂缝场景,而很少从无人机系统(UAS)检测的角度出发,注重设计网络架构来提高基于视觉的模型性能,导致缺乏针对性。因此,本研究针对基于无人机系统的检测场景,提出了一种基于深度卷积神经网络的新型轻量级裂缝像素级分割网络。首先,利用经典的编码器-解码器架构 UNET 作为桥梁结构裂缝识别的基础模型,并引入沙漏形深度可分离卷积来替代 UNET 模型中的传统卷积运算,以减少模型参数。然后,使用一种轻量级的高效通道关注模块来提高模型的特征模糊能力和分割精度。我们以一座大跨度桥梁为研究对象,对桥梁结构裂缝检测任务进行了一系列实验。实验结果表明,所构建的方法在推理精度和效率之间实现了有效的平衡,在桥梁混凝土裂缝数据集上的精度为 97.62%,召回率为 97.23%,准确率为 97.42%,IOU 为 93.25%,明显高于其他最先进的基线方法。由此可以推断,沙漏形深度可分体积的应用能有效减少基本模型参数。此外,轻量高效的注意力模块可以在不降维的情况下实现局部跨通道交互,提高网络分割性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Autonomous Identification of Bridge Concrete Cracks Using Unmanned Aircraft Images and Improved Lightweight Deep Convolutional Networks

Autonomous Identification of Bridge Concrete Cracks Using Unmanned Aircraft Images and Improved Lightweight Deep Convolutional Networks

The identification of the development of structural defects is an important part of bridge structure damage diagnosis, and cracks are considered the most typical and highly dangerous structural disease. However, existing deep learning-based methods are mostly aimed at the scene of concrete cracks, while they rarely focus on designing network architectures to improve the vision-based model performance from the perspective of unmanned aircraft system (UAS) inspection, which leads to a lack of specificity. Because of this, this study proposes a novel lightweight deep convolutional neural network-based crack pixel-level segmentation network for UAS-based inspection scenes. Firstly, the classical encoder-decoder architecture UNET is utilized as the base model for bridge structural crack identification, and the hourglass-shaped depthwise separable convolution is introduced to replace the traditional convolutional operation in the UNET model to reduce model parameters. Then, a kind of lightweight and efficient channel attention module is used to improve model feature fuzzy ability and segmentation accuracy. We conducted a series of experiments on bridge structural crack detection tasks by utilizing a long-span bridge as the research item. The experimental results show that the constructed method achieves an effective balance between reasoning accuracy and efficiency with the value of 97.62% precision, 97.23% recall, 97.42% accuracy, and 93.25% IOU on the bridge concrete crack datasets, which are significantly higher than those of other state-of-the-art baseline methods. It can be inferred that the application of hourglass-shaped depth-separable volumes can actively reduce basic model parameters. Moreover, the lightweight and efficient attention modules can achieve local cross-channel interaction without dimensionality reduction and improve the network segmentation performance.

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来源期刊
Structural Control & Health Monitoring
Structural Control & Health Monitoring 工程技术-工程:土木
CiteScore
9.50
自引率
13.00%
发文量
234
审稿时长
8 months
期刊介绍: The Journal Structural Control and Health Monitoring encompasses all theoretical and technological aspects of structural control, structural health monitoring theory and smart materials and structures. The journal focuses on aerospace, civil, infrastructure and mechanical engineering applications. Original contributions based on analytical, computational and experimental methods are solicited in three main areas: monitoring, control, and smart materials and structures, covering subjects such as system identification, health monitoring, health diagnostics, multi-functional materials, signal processing, sensor technology, passive, active and semi active control schemes and implementations, shape memory alloys, piezoelectrics and mechatronics. Also of interest are actuator design, dynamic systems, dynamic stability, artificial intelligence tools, data acquisition, wireless communications, measurements, MEMS/NEMS sensors for local damage detection, optical fibre sensors for health monitoring, remote control of monitoring systems, sensor-logger combinations for mobile applications, corrosion sensors, scour indicators and experimental techniques.
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