2022
DOI: 10.1111/mice.12949
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A robust real‐time method for identifying hydraulic tunnel structural defects using deep learning and computer vision

Abstract: Robots with cameras provide a non-contact information acquisition solution for hydraulic tunnels, while manual damage-related information extraction is timeconsuming and costs labor. This study proposes a robust real-time framework for identifying hydraulic tunnel underwater structural damage using deep learning and computer vision. First, a high-performance detector is built via the You Only Look Once v5s and adaptively spatial feature fusion module. A series of comparative experiments are used to explore the… Show more

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Cited by 23 publications
(6 citation statements)
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“…This makes it more appropriate for use in complex backgrounds where apparent bridge damage needs to be detected. Additionally, the detection speed fps of the enhanced algorithm is only 2 fps slower than the original YOLO v3, meaning that it can still identify bridge damage with greater accuracy and at a high speed, a speed that can enable it to detect defects in real time 28 .…”
Section: Analysis Of Experimental Resultsmentioning
confidence: 99%
“…This makes it more appropriate for use in complex backgrounds where apparent bridge damage needs to be detected. Additionally, the detection speed fps of the enhanced algorithm is only 2 fps slower than the original YOLO v3, meaning that it can still identify bridge damage with greater accuracy and at a high speed, a speed that can enable it to detect defects in real time 28 .…”
Section: Analysis Of Experimental Resultsmentioning
confidence: 99%
“…Since the publication of the first journal article on civil engineering applications of neural networks (Adeli & Yeh, 1989), this topic has gained increasing attention with computer hardware F I G U R E 2 As a brief demonstration of the technique route and relevant challenges, only common waveform features were extracted and fitted in three-dimensional feature spaces to provide rapid visualization. A systematic approach is discussed step-by-step, starting from Section 3. improvements in recent years (Li, Bao, et al, 2023). Lu et al (2020) applied a modified CNN combined with a significant extraction method to rail detection tasks on a high-speed railway line and achieved good performance.…”
Section: Data Analytics: Advantages and Impediment Of Deep Learningmentioning
confidence: 99%
“…Machine learning applications in industries, particularly in steel structure research, have emerged as early as the last century (Adeli & Park, 1996). Since the publication of the first journal article on civil engineering applications of neural networks (Adeli & Yeh, 1989), this topic has gained increasing attention with computer hardware improvements in recent years (Li, Bao, et al., 2023). Lu et al.…”
Section: Introductionmentioning
confidence: 99%
“…Object detection makes use of bounding boxes to classify and locate defects in images (Redmon et al, 2016; Ren et al, 2017). Li (Li et al, 2022) performed the sparsification and pruning based on You Only Look Once v5s (YOLOv5s), which reduced network redundancy parameters. Then, knowledge distillation was used to restore the accuracy reduction brought by pruning, and real-time identification of defects such as rust, exfoliation, and calcification precipitate in hydraulic structures was finally realized.…”
Section: Introductionmentioning
confidence: 99%