2023
DOI: 10.3390/drones7030189
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Segmentation Detection Method for Complex Road Cracks Collected by UAV Based on HC-Unet++

Abstract: Road cracks are one of the external manifestations of safety hazards in transportation. At present, the detection and segmentation of road cracks is still an intensively researched issue. With the development of image segmentation technology of the convolutional neural network, the identification of road cracks has also ushered in new opportunities. However, the traditional road crack segmentation method has these three problems: 1. It is susceptible to the influence of complex background noise information. 2.… Show more

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Cited by 16 publications
(6 citation statements)
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“…To prove the advancement of CCSNet, this section compares CCSNet with seven SOTA professional crack segmentation networks, including the tunnel crack segmentation network CrackSegNet (Ren et al., 2020), lightweight crack segmentation network CrackFormer (Miao et al., 2021), bridge crack segmentation network BC‐DUnet (Liu et al., 2022), building crack segmentation network DCSNet (Pang et al., 2022), concrete crack segmentation network CrackW‐Net (C. Han et al., 2022), road crack segmentation network HC‐UNet++ (Cao et al., 2023), and ARD‐Unet (Yu et al., 2023). As can be seen from the results in Table 7, to make each network achieve the best training parameters, the Adam optimizer and SGD optimizer are used to do two groups of training.…”
Section: Methodsmentioning
confidence: 99%
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“…To prove the advancement of CCSNet, this section compares CCSNet with seven SOTA professional crack segmentation networks, including the tunnel crack segmentation network CrackSegNet (Ren et al., 2020), lightweight crack segmentation network CrackFormer (Miao et al., 2021), bridge crack segmentation network BC‐DUnet (Liu et al., 2022), building crack segmentation network DCSNet (Pang et al., 2022), concrete crack segmentation network CrackW‐Net (C. Han et al., 2022), road crack segmentation network HC‐UNet++ (Cao et al., 2023), and ARD‐Unet (Yu et al., 2023). As can be seen from the results in Table 7, to make each network achieve the best training parameters, the Adam optimizer and SGD optimizer are used to do two groups of training.…”
Section: Methodsmentioning
confidence: 99%
“…CrackW-Net is designed by skiplevel round-trip sampling block structure. Cao et al (2023) proposed an HC-Unet++ and designed a deep parallel feature fusion module. HC-Unet++ could identify multiple irregularly shaped cracks.…”
Section: Introductionmentioning
confidence: 99%
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“…In the field of aerospace remote sensing, attention mechanisms also play an important role in many directions [48][49][50]. LMNet [51] proposes the Residual Transformer 3D-spatial Attention Module (RT3DsAM), which can learn feature representations from global information and filter important information.…”
Section: Feature Attentionmentioning
confidence: 99%
“…[13][14][15][16][17] Researchers have used drone aerial images to accurately identify and classify pavement defects, such as potholes and cracks. [18][19][20][21] They can also extract and calculate parameters, such as length, width, and area of the defects, 22,23 with recognition accuracy reaching centimeter 24 or millimeter 25 levels. However, the pavement research using drone images is limited to a small area.…”
Section: Introductionmentioning
confidence: 99%