A Novel Model for Instance Segmentation and Quantification of Bridge Surface Cracks—The YOLOv8-AFPN-MPD-IoU

IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Sensors Pub Date : 2024-07-01 DOI:10.3390/s24134288
Chenqin Xiong, Tarek Zayed, Xingyu Jiang, Ghasan Alfalah, Eslam Mohammed Abelkader
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Abstract

Surface cracks are alluded to as one of the early signs of potential damage to infrastructures. In the same vein, their detection is an imperative task to preserve the structural health and safety of bridges. Human-based visual inspection is acknowledged as the most prevalent means of assessing infrastructures’ performance conditions. Nonetheless, it is unreliable, tedious, hazardous, and labor-intensive. This state of affairs calls for the development of a novel YOLOv8-AFPN-MPD-IoU model for instance segmentation and quantification of bridge surface cracks. Firstly, YOLOv8s-Seg is selected as the backbone network to carry out instance segmentation. In addition, an asymptotic feature pyramid network (AFPN) is incorporated to ameliorate feature fusion and overall performance. Thirdly, the minimum point distance (MPD) is introduced as a loss function as a way to better explore the geometric features of surface cracks. Finally, the middle aisle transformation is amalgamated with Euclidean distance to compute the length and width of segmented cracks. Analytical comparisons reveal that this developed deep learning network surpasses several contemporary models, including YOLOv8n, YOLOv8s, YOLOv8m, YOLOv8l, and Mask-RCNN. The YOLOv8s + AFPN + MPDIoU model attains a precision rate of 90.7%, a recall of 70.4%, an F1-score of 79.27%, mAP50 of 75.3%, and mAP75 of 74.80%. In contrast to alternative models, our proposed approach exhibits enhancements across performance metrics, with the F1-score, mAP50, and mAP75 increasing by a minimum of 0.46%, 1.3%, and 1.4%, respectively. The margin of error in the measurement model calculations is maintained at or below 5%. Therefore, the developed model can serve as a useful tool for the accurate characterization and quantification of different types of bridge surface cracks.
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用于实例分割和量化桥梁表面裂缝的新型模型--YOLOv8-AFPN-MPD-IoU
表面裂缝被认为是基础设施潜在损坏的早期迹象之一。同样,检测裂缝也是保护桥梁结构健康和安全的当务之急。人工目测被认为是评估基础设施性能状况的最普遍手段。然而,这种方法不可靠、乏味、危险且耗费人力。这种情况要求开发一种新型 YOLOv8-AFPN-MPD-IoU 模型,用于对桥梁表面裂缝进行实例分割和量化。首先,选择 YOLOv8s-Seg 作为骨干网络来进行实例分割。此外,还加入了渐变特征金字塔网络(AFPN),以改善特征融合和整体性能。第三,引入最小点距离(MPD)作为损失函数,以更好地探索表面裂缝的几何特征。最后,中间过道变换与欧氏距离相结合,计算出裂缝分割的长度和宽度。分析比较结果表明,所开发的深度学习网络超越了多个当代模型,包括 YOLOv8n、YOLOv8s、YOLOv8m、YOLOv8l 和 Mask-RCNN。YOLOv8s + AFPN + MPDIoU 模型的精确率为 90.7%,召回率为 70.4%,F1 分数为 79.27%,mAP50 为 75.3%,mAP75 为 74.80%。与其他模型相比,我们提出的方法在各项性能指标上都有所提高,F1 分数、mAP50 和 mAP75 分别至少提高了 0.46%、1.3% 和 1.4%。测量模型计算的误差率保持在 5%或以下。因此,所开发的模型可作为准确表征和量化不同类型桥梁表面裂缝的有用工具。
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来源期刊
Sensors
Sensors 工程技术-电化学
CiteScore
7.30
自引率
12.80%
发文量
8430
审稿时长
1.7 months
期刊介绍: Sensors (ISSN 1424-8220) provides an advanced forum for the science and technology of sensors and biosensors. It publishes reviews (including comprehensive reviews on the complete sensors products), regular research papers and short notes. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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