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Development of a portable device for structural visual inspection 一种便携式结构目测装置的研制
IF 8.5 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-03-03 DOI: 10.1111/mice.13399
Jongbin Won, Minhyuk Song, Jongwoong Park

Visual inspection is crucial for the maintenance of built infrastructures, facilitating early detection and quantification of damage. Traditional manual methods, however, often require inspectors to access dangerous or inaccessible areas, posing significant safety risks and inefficiencies. In response to these challenges, this paper introduces a portable visual inspection device (VID) integrated with three laser distance meters and a high-resolution camera. The VID enhances the efficiency of visual inspection by incorporating methods that accurately estimate the camera's pose relative to the target surface and determine a scale factor for precise damage quantification. The proposed methods were validated through experimental validations, demonstrating their precision and effectiveness. In lab-scale validation, the angle estimation showed accuracy with less than 3 degrees of error, and the scale factor estimation method showed discrepancies of less than 1 mm, even when the observation angle exceeded 20 degrees. Subsequent field experiments confirmed the VID's capability to detect and measure microcracks as narrow as 0.1 mm. Furthermore, the device successfully quantified non-crack damage with an error margin of 1.84%, even at challenging angles exceeding 45 degrees.

目视检查对于维护已建基础设施至关重要,有助于及早发现和量化损坏情况。然而,传统的人工方法往往要求检测人员进入危险或无法进入的区域,从而带来了巨大的安全风险和低效率。为了应对这些挑战,本文介绍了一种集成了三个激光测距仪和一个高分辨率摄像头的便携式视觉检测设备(VID)。VID 采用了多种方法,可准确估算摄像头相对于目标表面的姿态,并确定比例因子,从而精确量化损坏程度,从而提高了视觉检测的效率。所提出的方法通过实验验证,证明了其精确性和有效性。在实验室规模的验证中,角度估算的精度误差小于 3 度,而比例因子估算方法的误差小于 1 毫米,即使观测角度超过 20 度。随后的现场实验证实,VID 能够检测和测量窄至 0.1 毫米的微裂缝。此外,即使在观察角度超过 45 度的情况下,该设备也能成功量化非裂纹损伤,误差率仅为 1.84%。
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引用次数: 0
Crack segmentation-guided measurement with lightweight distillation network on edge device 基于边缘装置的轻量蒸馏网络裂缝分割导向测量
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-03-03 DOI: 10.1111/mice.13446
Jianqi Zhang, Ling Ding, Wei Wang, Hainian Wang, Ioannis Brilakis, Diana Davletshina, Rauno Heikkilä, Xu Yang
Pavement crack measurement (PCM) is essential for automated, precise road condition assessment. However, balancing speed and accuracy on edge artificial intelligence (AI) mobile devices remains challenging. This paper proposes a real-time PCM framework for edge deployment, incorporating a lightweight distillation network and a surface feature measurement algorithm. Specifically, the proposed instance-aware hybrid distillation module combines feature-based and relation-based knowledge distillation, leveraging crack instance-related information for efficient knowledge transfer from teacher to student networks, which results in a more accurate and lightweight segmentation model. Additionally, a real-time crack surface feature measurement algorithm, based on distance mapping relationships and crack edge coordinate extraction, addresses issues with crack edge branching and loss, enhancing measurement efficiency. Real-time measurement was performed on actual roads utilizing mobile robot equipped with an edge computing unit. The crack segmentation precision reached 84.37%, with a frame per second of 77.72. Compared to the ground truth, the relative error for average crack width ranged from 6.42% to 40.65%, while the relative error for crack length varied between 1.48% and 3.76%. These findings highlight the feasibility of real-time crack assessment and save road maintenance costs.
路面裂缝测量(PCM)是实现道路状况自动化、精确评估的必要手段。然而,在边缘人工智能(AI)移动设备上平衡速度和准确性仍然具有挑战性。本文提出了一种用于边缘部署的实时PCM框架,该框架结合了轻量级蒸馏网络和表面特征测量算法。具体而言,本文提出的基于实例感知的混合蒸馏模块结合了基于特征和基于关系的知识蒸馏,利用与破解实例相关的信息从教师网络向学生网络进行有效的知识转移,从而获得更准确、更轻量的分割模型。此外,基于距离映射关系和裂纹边缘坐标提取的裂纹表面特征实时测量算法,解决了裂纹边缘分支和丢失问题,提高了测量效率。利用配备边缘计算单元的移动机器人在实际道路上进行实时测量。裂纹分割精度达到84.37%,帧数每秒77.72帧。与地面真实值相比,平均裂缝宽度的相对误差在6.42% ~ 40.65%之间,裂缝长度的相对误差在1.48% ~ 3.76%之间。这些发现强调了实时裂缝评估的可行性,并节省了道路维护成本。
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引用次数: 0
Generative adversarial network based on domain adaptation for crack segmentation in shadow environments 基于域自适应的生成对抗网络在阴影环境下的裂缝分割
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-03-02 DOI: 10.1111/mice.13451
Yingchao Zhang, Cheng Liu
Precision segmentation of cracks is important in industrial non-destructive testing, but the presence of shadows in the actual environment can interfere with the segmentation results of cracks. To solve this problem, this study proposes a two-stage domain adaptation framework called GAN-DANet for crack segmentation in shadowed environments. In the first stage, CrackGAN uses adversarial learning to merge features from shadow-free and shadowed datasets, creating a new dataset with more domain-invariant features. In the second stage, the CrackSeg network innovatively integrates enhanced Laplacian filtering (ELF) into high-resolution net to enhance crack edges and texture features while filtering out shadow information. In this model, CrackGAN addresses domain shift by generating a new dataset with domain-invariant features, avoiding direct feature alignment between source and target domains. The ELF module in CrackSeg effectively enhances crack features and suppresses shadow interference, improving the segmentation model's robustness in shadowed environments. Experiments show that GAN-DANet improves the crack segmentation accuracy, with the mean intersection over union value increasing from 57.87 to 75.03, which surpasses the performance of existing state-of-the-art domain adaptation algorithms.
裂纹的精确分割在工业无损检测中具有重要意义,但实际环境中阴影的存在会干扰裂纹的分割结果。为了解决这一问题,本研究提出了一种称为GAN-DANet的两阶段域自适应框架,用于阴影环境下的裂缝分割。在第一阶段,CrackGAN使用对抗性学习来合并无阴影和阴影数据集的特征,创建一个具有更多域不变特征的新数据集。在第二阶段,CrackSeg网络创新地将增强拉普拉斯滤波(enhanced Laplacian filtering, ELF)集成到高分辨率网络中,增强裂缝边缘和纹理特征,同时滤除阴影信息。在该模型中,CrackGAN通过生成具有域不变特征的新数据集来解决域移位问题,避免了源域和目标域之间的直接特征对齐。CrackSeg中的ELF模块有效增强了裂缝特征,抑制了阴影干扰,提高了分割模型在阴影环境下的鲁棒性。实验表明,GAN-DANet算法提高了裂缝分割的精度,平均交集/联合值从57.87提高到75.03,优于现有的最先进的域自适应算法。
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引用次数: 0
Cover Image, Volume 40, Issue 7 封面图片,第40卷,第7期
IF 8.5 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-03-02 DOI: 10.1111/mice.13449

The cover image is based on the article Multifidelity graph neural networks for efficient and accurate mesh-based partial differential equations surrogate modeling by Negin Alemazkoor et al., https://doi.org/10.1111/mice.13312.

封面图像基于neginalemazkoor等人的文章《多保真度图神经网络》,该文章用于高效准确的基于网格的偏微分方程代理建模(https://doi.org/10.1111/mice.13312)。
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引用次数: 0
Multivariate engineering formulas discovery with knowledge-based neural network 基于知识的神经网络的多元工程公式发现
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-02-26 DOI: 10.1111/mice.13448
Pei-Yao Chen, Chen Wang, Jian-Sheng Fan
Multivariate engineering formulas are the foundation of various engineering standards worldwide for constructing complex systems. Traditional formula discovery methods suffer from low efficiency, the curse of dimensionality, and low physical interpretability. To address these limitations, this study proposes a knowledge-based method for efficiently generating multivariate engineering formulas directly from data. The method consists of four components: (1) a deep generative model considering dimensional homogeneity, (2) a physics-adaptive normalization method for multiple engineering variables with different units, (3) a feature merging algorithm grounded in dimensionality theory, and (4) a machine learning-based data segmentation method for piecewise formulas. Experiments on two ground-truth datasets demonstrate that our proposed method improves the accuracy of the generated formulas by 35.6% (measured by mean absolute error), compared to the Eureqa program. Additionally, it enhances the mechanistic interpretability of the results, compared to both Eureqa and the emerging physics-informed neural network-based equation discovery methods. The piecewise formulas successfully capture the implicit mechanisms in the experimental data, consistent with theoretical analysis. Overall, our knowledge-based method holds great promise for improving the efficiency of discovering interpretable and generalizable multivariate engineering formulas, facilitating the transformation of new techniques from testing to applications.
多元工程公式是构建复杂系统的各种工程标准的基础。传统的公式发现方法存在效率低、维数诅咒、物理可解释性低等问题。为了解决这些限制,本研究提出了一种基于知识的方法,可以直接从数据中有效地生成多元工程公式。该方法由四个部分组成:(1)考虑维度同质性的深度生成模型;(2)针对不同单位的多个工程变量的物理自适应归一化方法;(3)基于维度理论的特征合并算法;(4)基于机器学习的分段公式数据分割方法。在两个真实数据集上的实验表明,与Eureqa程序相比,我们提出的方法将生成公式的精度提高了35.6%(以平均绝对误差衡量)。此外,与Eureqa和新兴的基于物理信息的神经网络的方程发现方法相比,它增强了结果的机制可解释性。分段公式成功地捕获了实验数据中的隐含机制,与理论分析一致。总的来说,我们的基于知识的方法对提高发现可解释和可推广的多元工程公式的效率有很大的希望,促进了新技术从测试到应用的转化。
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引用次数: 0
Underwater bridge pier morphology measurement method via refraction correction and multi-camera calibration 基于折射校正和多摄像机标定的水下桥墩形态测量方法
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-02-21 DOI: 10.1111/mice.13440
Tao Wu, Shitong Hou, Zhishen Wu, Wen Xiong, Jian Zhang, Xinxing Shao, Xiaoyuan He, Gang Wu
Underwater structural inspection is essential for ensuring the safety and longevity of bridges. To improve the efficiency and accuracy of these inspections, this paper presents a method for measuring the morphology of bridge piers through refraction correction and multi-camera calibration. Using an underwater visual inspection platform with appropriate lighting, the measurement equipment mitigates low visibility challenges. A coplanar camera refraction parameter calibration method based on encoded markers is proposed to reduce the effects of refraction, along with the development of a multi-refraction correction model. Additionally, a novel multi-camera extrinsic calibration method is introduced to stitch point clouds. A comparative analysis of the two extrinsic calibration methods, conducted both in air and underwater, has been performed to validate the accuracy and efficiency of the proposed approach. Finally, the circular cross-section shape of the underwater bridge pier was successfully measured, and the results of defect localization were effectively presented.
水下结构检测对于确保桥梁的安全性和使用寿命至关重要。为了提高这些检测的效率和准确性,本文介绍了一种通过折射校正和多摄像头校准来测量桥墩形态的方法。测量设备使用带有适当照明的水下视觉检测平台,可缓解能见度低的挑战。提出了一种基于编码标记的共面相机折射参数校准方法,以减少折射的影响,同时还开发了一个多折射校正模型。此外,还引入了一种新颖的多摄像头外校准方法来拼接点云。通过在空中和水下对两种外校准方法进行比较分析,验证了所提方法的准确性和效率。最后,成功测量了水下桥墩的圆形截面形状,并有效展示了缺陷定位结果。
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引用次数: 0
Multi-hazard probabilistic risk assessment and equitable multi-objective optimization of building retrofit strategies in hurricane-vulnerable communities 飓风易损社区建筑改造策略的多灾害概率风险评估与公平多目标优化
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-02-20 DOI: 10.1111/mice.13445
Abdullah M. Braik, Himadri Sen Gupta, Maria Koliou, Andrés D. González
Coastal communities are increasingly vulnerable to hurricanes, which cause billions of dollars in damage annually through wind, storm surge, and flooding. Mitigation efforts are essential to reduce these impacts but face significant challenges, including uncertainties in hazard prediction, damage estimation, and recovery costs. Resource constraints and the disproportionate burden borne by socioeconomically vulnerable groups further complicate retrofitting strategies. This study presents a probabilistic methodology to assess and mitigate hurricane risks by integrating hazard analysis, building fragility, and economic loss assessment. The methodology prioritizes retrofitting strategies using a risk-informed, equity-focused approach. Multi-objective optimization balances cost-effectiveness and risk reduction while promoting fair resource allocation among socioeconomic groups. The novelty of this study lies in its direct integration of equity as an objective in resource allocation through multi-objective optimization, its comprehensive consideration of multi-hazard risks, its inclusion of both direct and indirect losses in cost assessments, and its use of probabilistic hazard analysis to incorporate varying time horizons. A case study of the Galveston testbed demonstrates the methodology's potential to minimize damage and foster equitable resilience. Analysis of budget scenarios and trade-offs between cost and equity underscores the importance of comprehensive loss assessments and equity considerations in mitigation and resilience planning. Key findings highlight the varied effectiveness of retrofitting strategies across different budgets and time horizons, the necessity of addressing both direct and indirect losses, and the importance of multi-hazard considerations for accurate risk assessments. Multi-objective optimization underscores that equitable solutions are achievable even under constrained budgets. Beyond a certain point, achieving equity does not necessarily increase expected losses, demonstrating that more equitable solutions can be implemented without compromising overall cost-effectiveness.
沿海社区越来越容易受到飓风的影响,飓风每年通过风力、风暴潮和洪水造成数十亿美元的损失。缓解工作对于减少这些影响至关重要,但面临重大挑战,包括灾害预测、损害估计和恢复成本方面的不确定性。资源限制和社会经济弱势群体承担的不成比例的负担使改造战略进一步复杂化。本研究提出了一种概率方法,通过综合危害分析、建筑脆弱性和经济损失评估来评估和减轻飓风风险。该方法使用风险知情、以股票为中心的方法来优先调整策略。多目标优化平衡了成本效益和降低风险,同时促进了社会经济群体之间资源的公平分配。本研究的新颖之处在于通过多目标优化直接将公平作为资源配置的目标,全面考虑多灾害风险,在成本评估中包括直接和间接损失,并使用概率风险分析来考虑不同的时间范围。加尔维斯顿试验台的案例研究证明了该方法在减少损害和促进公平弹性方面的潜力。对预算情景和成本与公平之间权衡的分析强调了在缓解和复原力规划中全面损失评估和公平考虑的重要性。主要研究结果强调了在不同预算和时间范围内改造战略的不同有效性,解决直接和间接损失的必要性,以及对准确风险评估进行多灾害考虑的重要性。多目标优化强调,即使在预算有限的情况下,也可以实现公平的解决方案。超过某一点,实现公平并不一定会增加预期损失,这表明可以在不损害总体成本效益的情况下实施更公平的解决方案。
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引用次数: 0
Hybrid deep learning model for predicting failure properties of asphalt binder from fracture surface images 基于裂缝面图像预测沥青粘结剂破坏特性的混合深度学习模型
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-02-20 DOI: 10.1111/mice.13447
Babak Asadi, Viraj Shah, Abhilash Vyas, Mani Golparvar-Fard, Ramez Hajj
Cracking impacts asphalt concrete durability primarily due to cohesive asphalt binder failures. The poker chip test has recently been introduced to better characterize the cracking potential of asphalt binders by fracturing a specimen in a realistic stress state to a thin binder film. However, broader adoption faces challenges due to high instrumentation costs for measuring load and displacement. This paper presents and validates a deep learning model that predicts ductility and tensile strength from posttest images of fractured binder surfaces, with potential extensions to simplified instrumentation. The hybrid model, named PCNet, integrates a custom lightweight convolutional neural network (CNN) developed to capture local features (e.g., edges, boundaries, contours) within fracture cavities with a Swin Transformer that models global contextual dependencies. A bidirectional cross-attention fusion module is designed to facilitate mutual information exchange between CNN and transformer branches. The fused features are then processed by a fully connected network (FCN) to predict indices derived from the test. The proposed model demonstrates high predictive accuracy across a range of binders and test configurations, achieving an <span data-altimg="/cms/asset/e9fbf493-59db-40fa-93fd-5f973187445b/mice13447-math-0001.png"></span><mjx-container ctxtmenu_counter="150" ctxtmenu_oldtabindex="1" jax="CHTML" role="application" sre-explorer- style="font-size: 103%; position: relative;" tabindex="0"><mjx-math aria-hidden="true" location="graphic/mice13447-math-0001.png"><mjx-semantics><mjx-msup data-semantic-children="0,1" data-semantic- data-semantic-role="latinletter" data-semantic-speech="upper R squared" data-semantic-type="superscript"><mjx-mi data-semantic-annotation="clearspeak:simple" data-semantic-font="italic" data-semantic- data-semantic-parent="2" data-semantic-role="latinletter" data-semantic-type="identifier"><mjx-c></mjx-c></mjx-mi><mjx-script style="vertical-align: 0.363em;"><mjx-mn data-semantic-annotation="clearspeak:simple" data-semantic-font="normal" data-semantic- data-semantic-parent="2" data-semantic-role="integer" data-semantic-type="number" size="s"><mjx-c></mjx-c></mjx-mn></mjx-script></mjx-msup></mjx-semantics></mjx-math><mjx-assistive-mml display="inline" unselectable="on"><math altimg="urn:x-wiley:10939687:media:mice13447:mice13447-math-0001" display="inline" location="graphic/mice13447-math-0001.png" xmlns="http://www.w3.org/1998/Math/MathML"><semantics><msup data-semantic-="" data-semantic-children="0,1" data-semantic-role="latinletter" data-semantic-speech="upper R squared" data-semantic-type="superscript"><mi data-semantic-="" data-semantic-annotation="clearspeak:simple" data-semantic-font="italic" data-semantic-parent="2" data-semantic-role="latinletter" data-semantic-type="identifier">R</mi><mn data-semantic-="" data-semantic-annotation="clearspeak:simple" data-semantic-font="normal" data-semantic-parent="2" data-semantic-rol
裂缝影响沥青混凝土耐久性的主要原因是沥青粘结剂的失效。最近,为了更好地表征沥青粘结剂的开裂潜力,引入了扑克筹码测试,通过将试样在实际应力状态下压裂成薄粘结剂膜。然而,由于测量负载和位移的仪器成本高,因此更广泛的采用面临挑战。本文提出并验证了一种深度学习模型,该模型可以从断裂粘结剂表面的测试后图像中预测延展性和抗拉强度,并有可能扩展到简化的仪器。该混合模型名为PCNet,集成了一个定制的轻量级卷积神经网络(CNN),用于捕获裂缝腔内的局部特征(例如边缘、边界、轮廓),以及一个模拟全局上下文依赖性的Swin Transformer。设计双向交叉关注融合模块,促进CNN与变压器支路之间的相互信息交换。然后通过全连接网络(FCN)对融合的特征进行处理,以预测从测试中得到的指标。所提出的模型在一系列粘合剂和测试配置中具有很高的预测精度,在预测韧性方面达到了0.966的R2$ R^2$和12.95%的平均绝对百分比误差(MAPE),同时在强度方面也达到了0.947的R2$ R^2$和9.15%的MAPE,优于独立模型。在FCN中还引入了蒙特卡罗Dropout来量化预测置信度。这种具有成本效益的方法提供了对软粘弹性介质中裂缝扩展的见解,并为实验力学领域做出了贡献。随着数据的进一步收集,该模型具有更广泛应用的潜力,可以直接将裂缝表面图像与混合或现场尺度的裂缝行为联系起来。
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引用次数: 0
Hybrid physics‐informed neural network with parametric identification for modeling bridge temperature distribution 混合物理信息神经网络与参数识别桥梁温度分布建模
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-02-18 DOI: 10.1111/mice.13436
Yanjia Wang, Dong Yang, Ye Yuan, Jing Zhang, Francis T. K. Au
This paper introduces a novel hybrid multi‐model thermo‐temporal physics‐informed neural network (TT‐PINN) framework for thermal loading prediction in composite bridge decks. Unlike the existing PINN applications in heat transfer that focus on simple geometries, this framework uniquely addresses multi‐material domains and realistic boundary conditions through a dual‐network architecture designed for composite structures. The framework further incorporates the environmental boundary conditions of natural convection and solar radiation into the loss function and employs transfer learning for efficient adaptation to varying conditions. Moreover, a transfer learning mechanism enables rapid adaptation to new environmental states, thus markedly reducing the computations as compared to the conventional finite element method (FEM). Through noise‐augmented training and parameter identification, the TT‐PINN effectively handles the real‐world monitoring data uncertainties and allows material property calibration with limited sensor data. The framework's ability to capture complex thermal behavior is validated by studying a cable‐stayed bridge. It significantly reduces the computational costs as compared to the traditional FEM approaches.
本文介绍了一种用于复合桥面热载荷预测的新型混合多模型热时物理信息神经网络(TT - PINN)框架。与现有的专注于简单几何形状的热传递中的PINN应用不同,该框架通过为复合材料结构设计的双网络架构,独特地解决了多材料领域和现实边界条件。该框架进一步将自然对流和太阳辐射的环境边界条件纳入损失函数,并采用迁移学习来有效适应变化的条件。此外,迁移学习机制能够快速适应新的环境状态,因此与传统的有限元方法(FEM)相比,大大减少了计算量。通过噪声增强训练和参数识别,TT - PINN有效地处理了现实世界监测数据的不确定性,并允许在有限的传感器数据下进行材料特性校准。通过对斜拉桥的研究,验证了该框架捕捉复杂热行为的能力。与传统的有限元方法相比,它大大降低了计算成本。
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引用次数: 0
An optimized and precise road crack segmentation network in complex scenarios 复杂场景下优化精确的道路裂缝分割网络
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-02-17 DOI: 10.1111/mice.13444
Gang Wang, MingFang He, Genhua Liu, Liujun Li, Exian Liu, Guoxiong Zhou
Road cracks pose a serious threat to the stability of road structures and traffic safety. Therefore, this paper proposes an optimized accurate road crack segmentation network called MBGBNet, which can solve the problems of complex background, tiny cracks, and irregular edges in road segmentation. First, multi-scale domain feature aggregation is proposed to address the interference of complex background. Second, bidirectional embedding fusion adaptive attention is proposed to capture the features of tiny cracks, and finally, Gaussian weighted edge segmentation algorithm is proposed to ensure the accuracy of crack edge segmentation. In addition, this paper uses the preheated bat optimization algorithm, which can quickly determine the optimal learning rate to converge the equilibrium. In the validation experiments on the self-built dataset, mean intersection over union reaches 80.54% and precision of 86.38%. MBGBNet outperforms the other seven state-of-the-art crack segmentation networks on the three classical crack datasets, highlighting its advanced segmentation capabilities. Therefore, MBGBNet is an effective auxiliary method for solving road safety problems.
道路裂缝严重威胁着道路结构的稳定和交通安全。为此,本文提出了一种优化的道路裂缝精确分割网络MBGBNet,该网络可以解决道路分割中背景复杂、裂缝微小、边缘不规则等问题。首先,针对复杂背景的干扰,提出了多尺度域特征聚合方法。其次,提出双向嵌入融合自适应关注捕捉微小裂纹特征,最后,提出高斯加权边缘分割算法,保证裂纹边缘分割的准确性。此外,本文还采用了预热棒优化算法,该算法可以快速确定最优学习率以收敛平衡。在自建数据集上的验证实验中,平均交点超过并集达到80.54%,精度达到86.38%。MBGBNet在三个经典裂缝数据集上优于其他七个最先进的裂缝分割网络,突出了其先进的分割能力。因此,MBGBNet是解决道路安全问题的有效辅助方法。
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引用次数: 0
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Computer-Aided Civil and Infrastructure Engineering
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