Concrete Crack Detection Based on Well-Known Feature Extractor Model and the YOLO_v2 Network

Teng, Shuai and Liu, Zongchao and Chen, Gongfa and Cheng, Li (2021) Concrete Crack Detection Based on Well-Known Feature Extractor Model and the YOLO_v2 Network. Applied Sciences, 11 (2). p. 813. ISSN 2076-3417

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Abstract

This paper compares the crack detection performance (in terms of precision and computational cost) of the YOLO_v2 using 11 feature extractors, which provides a base for realizing fast and accurate crack detection on concrete structures. Cracks on concrete structures are an important indicator for assessing their durability and safety, and real-time crack detection is an essential task in structural maintenance. The object detection algorithm, especially the YOLO series network, has significant potential in crack detection, while the feature extractor is the most important component of the YOLO_v2. Hence, this paper employs 11 well-known CNN models as the feature extractor of the YOLO_v2 for crack detection. The results confirm that a different feature extractor model of the YOLO_v2 network leads to a different detection result, among which the AP value is 0.89, 0, and 0 for ‘resnet18’, ‘alexnet’, and ‘vgg16’, respectively meanwhile, the ‘googlenet’ (AP = 0.84) and ‘mobilenetv2’ (AP = 0.87) also demonstrate comparable AP values. In terms of computing speed, the ‘alexnet’ takes the least computational time, the ‘squeezenet’ and ‘resnet18’ are ranked second and third respectively; therefore, the ‘resnet18’ is the best feature extractor model in terms of precision and computational cost. Additionally, through the parametric study (influence on detection results of the training epoch, feature extraction layer, and testing image size), the associated parameters indeed have an impact on the detection results. It is demonstrated that: excellent crack detection results can be achieved by the YOLO_v2 detector, in which an appropriate feature extractor model, training epoch, feature extraction layer, and testing image size play an important role.

Item Type: Article
Subjects: European Scholar > Engineering
Depositing User: Managing Editor
Date Deposited: 05 Jan 2023 06:53
Last Modified: 22 Jun 2024 07:58
URI: http://article.publish4promo.com/id/eprint/1036

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