基于Adam-SqueezeNet深度学习模型的混凝土裂缝图像自动检测

IF 1.2 Q4 MATERIALS SCIENCE, MULTIDISCIPLINARY
L. Wang
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引用次数: 0

摘要

混凝土表面的裂缝通常是对结构完整性和可用性潜在威胁的明显警告信号。基于图像处理的技术可以有效地从图像中检测出裂纹。然而,这些技术通常容易受到用户驱动的启发式阈值和无关干扰因素的影响。受人工智能最近成功的启发,开发了一种名为CrackSN的基于深度学习的自动裂纹检测系统。为了开发和训练CrackSN系统,通过智能手机收集并精心准备了混凝土表面的图像数据集。该提出的深度学习模型建立在Adam SqueezeNet架构上,直接从标记和增强的补丁中自动学习判别特征。SqueezeNet的超参数通过训练和验证程序使用Adam优化添加剂进行调整。微调后的CrackSN模型通过对图像数据集中97.3%的裂纹补丁进行正确分类,优于最近文献中最先进的模型。CrackSN模型在轻型网络设计和卓越性能方面的成功为基础设施的自动化损伤检测和健康评估迈出了关键一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic detection of concrete cracks from images using Adam-SqueezeNet deep learning model
Cracks on concrete surface are typically clear warning signs of a potential threat to the integrity and serviceability of structure. The techniques based on image processing can effectively detect the cracks from images. These techniques, however, are generally susceptible to user-driven heuristic thresholds and extraneous distractors. Inspired by recent success of artificial intelligence, a deep learning based automated crack detection system called CrackSN was developed. An image dataset of concrete surface is collected by smartphone and carefully prepared in order to develop and train the CrackSN system. This proposed deep learning model, built on the Adam-SqueezeNet architecture, automatically learns the discriminative feature directly from the labeled and augmented patches. Hyperparameters of SqueezeNet are tuned with Adam optimization additive through the training and validation procedures. The fine-tuned CrackSN model outperforms state-of-the-art models in recent literature by correctly classifying 97.3% of the cracked patches in the image dataset. The success of CrackSN model demonstrated with light network design and outstanding performance provides a key step toward automated damage inspection and health evaluation for infrastructure.  
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来源期刊
Frattura ed Integrita Strutturale
Frattura ed Integrita Strutturale Engineering-Mechanical Engineering
CiteScore
3.40
自引率
0.00%
发文量
114
审稿时长
6 weeks
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