Submitted:
29 June 2025
Posted:
30 June 2025
You are already at the latest version
Abstract

Keywords:
1. Introduction
2. Pavement Disease Data Set and Experimental Environment Configuration
2.1. Pavement Disease Dataset
2.2. Experimental Environment Configuration
3. Model Introduction and Improvement
3.1. YOLOv8 Network Model
3.2. Dynamic Dual-Path Down-Sampling DS_ Module
3.3. Multi-Scale Pooling SPPF_WD Module
3.4. Multi-Path Feature Extraction and Enhancement RCRep2A_FRFN Module
- h, w, c: height, width, and channels of the input feature map
- H, W: height and width of the output feature map
- n: number of convolutional kernels
- k: size of convolutional kernel
- d: kernel size in linear transformation
- s: number of transformations
- , : computational and parameter ratios between regular convolution and GhostConv
- Layer Normalization (LN): Stabilizes the training process and accelerates convergence.
- Pointwise Convolution (PConv): Performs efficient inter-channel information fusion and spatial feature extraction, enhancing feature representation capability.
- Linear Layer: Maps input features to meet the requirements of subsequent network layers.
- Split and Reshape Operations: Enhance feature fusion capabilities across different levels and channels, enabling extraction of subtle features from multiple dimensions.
- Depthwise Convolution (DWConv): Performs independent convolution operations on each input channel, effectively reducing computational load while preserving spatial information of feature maps.
- Flatten Operation: Transforms processed feature maps into a flattened format suitable for the linear layer.
- Final Linear Layer: Further maps features to improve detection accuracy for complex defects.
- Progressive refinement of features layer by layer
- Effective handling of complex background details
- Enhanced fusion of features across different levels and channels
- Significant improvement in recognizing minute defects (cracks, potholes)
- Balanced computational efficiency and feature representation
3.5. YOLOv8n-DSRS Network Model
4. Experimental Results and Analysis
4.1. Evaluation Criteria
4.2. Melting Experiments and Analysis
4.3. Comparison and Analysis of the Original YOLOv8 Model and the Improved Model
4.4. Comparison and Analysis of Different Model Experiments
5. Conclusions
References
- LeCun, Y., Bottou, L., Bengio, Y., & Haffner, P. (1998). Gradient-based learning applied to document recognition. Proceedings of the IEEE, 86(11), 2278-2324. [CrossRef]
- He, K., Zhang, X., Ren, S., & Sun, J. (2016). Deep residual learning for image recognition. In Proceedings of the IEEE conference on computer vision and pattern recognition (pp. 770-778).
- Redmon, J., Divvala, S., Girshick, R., & Farhadi, A. (2016). You only look once: Unified, real-time object detection. In Proceedings of the IEEE conference on computer vision and pattern recognition (pp. 779-788).
- Lv B, Zhang S, Gong H, et al. Pavement Disease Visual Detection by Structure Perception and Feature Attention Network. Applied Sciences, 2025, 15(2):551-551. [CrossRef]
- Hou Y, Li Y, Du M, et al. Bridging Data Distribution Gaps: Test-Time Adaptation for Enhancing Cross-Scenario Pavement Distress Detection. Applied Sciences, 2024, 14(24):11974-11974. [CrossRef]
- Li J, Yuan C, Wang X, et al. Semi-supervised crack detection using segment anything model and deep transfer learning. Automation in Construction, 2025, 170:105899-105899. [CrossRef]
- Liu Z, Wu W, Gu X, et al. PaveDistress: A comprehensive dataset of pavement distresses detection. Data in Brief, 2024, 57:111111-111111. [CrossRef]
- Vaswani, Ashish, et al. "Attention is all you need." Advances in neural information processing systems, 2017, 30.
- Huang Q W, Feng L, He L Y. LTPLN: Automatic pavement distress detection. PloS one, 2024, 19(10):e0309172.
- Mahdy, Kamel, et al. "Pavement distress instance segmentation using deep neural networks and low-cost sensors." Innovative Infrastructure Solutions, 2024, 9(1):6. [CrossRef]
- Haohui Y, Junfei Z. UAV-PDD2023: A benchmark dataset for pavement distress detection based on UAV images. Data in Brief, 2023, 51:109692-109692.
- Cancan Y, Jun L, Tao H, et al. An efficient method of pavement distress detection based on improved YOLOv7. Measurement Science and Technology, 2023, 34(11).
- Wu, Lingxiao, Zhugeng Duan, and Chenghao Liang. "Research on asphalt pavement disease detection based on improved YOLOv5s." Journal of Sensors, 2023, 1:2069044. [CrossRef]
- Chu, Yinze, et al. "Pavement disease detection through improved YOLOv5s neural network." Computational Intelligence and Neuroscience, 2022, 1:1969511. [CrossRef]
- Yang, Zhen, Lin Li, and Wenting Luo. "PDNet: Improved YOLOv5 nondeformable disease detection network for asphalt pavement." Computational Intelligence and Neuroscience, 2022, 1:5133543. [CrossRef]
- Hou, Yun, et al. "The application of a pavement distress detection method based on FS-Net." Sustainability, 2022, 14(5):2715. [CrossRef]
- Du, Yuchuan, et al. "Pavement distress detection and classification based on YOLO network." International Journal of Pavement Engineering, 2021, 22(13):1659-1672. [CrossRef]
- Sun, P., et al. "DSWMamba: A deep feature fusion mamba network for detection of asphalt pavement distress." Construction and Building Materials 469 (2025): 140393. [CrossRef]
- Abdelkader, M. F., et al. "EGY_PDD: a comprehensive multi-sensor benchmark dataset for accurate pavement distress detection and classification." Multimedia Tools and Applications (2025): 1-36. [CrossRef]
- He, J., Gong, L., Xu, C., et al. "HighRPD: A high-altitude drone dataset of road pavement distress." Data in Brief 59 (2025): 111377-111377. [CrossRef]
- Zhao, Y., et al. "An efficient pavement distress detection scheme through drone-ground vehicle coordination." Transportation Research Part A: Policy and Practice 180 (2024): 103949. [CrossRef]
- Li, Y., et al. "Crackyolo: Rural pavement distress detection model with complex scenarios." Electronics 13.2 (2024): 312. [CrossRef]
- Hu, X., Yan, Y., Wang, D., et al. A lightweight detection method for road surface defects based on the YOLOM algorithm. Journal of Chinese Highway Engineering, 2024, 37(12): 381-391. [CrossRef]
- Han, Z., et al. "MS-YOLOv8-based object detection method for pavement diseases." Sensors 24.14 (2024): 4569. [CrossRef]
- Wang, S., et al. "Automated detection of pavement distress based on enhanced YOLOv8 and synthetic data with textured background modeling." Transportation Geotechnics 48 (2024): 101304. [CrossRef]
- Liu, W., et al. "Intelligent detection of hidden distresses in asphalt pavement based on GPR and deep learning algorithm." Construction and Building Materials 416 (2024): 135089. [CrossRef]
- Li, X. & Zhang, Y. Improved Road Damage Detection Algorithm Based on YOLOv8n. IAENG International Journal of Computer Science, 2024, 51(11).
- Wu, F., Fan, A., Baevski, A., et al. Pay Less Attention with Lightweight and Dynamic Convolutions. CoRR, 2019, https://arxiv.org/abs/1901.10430.
- Han, K., Wang, Y., Tian, Q., Guo, J., Xu, C., & Xu, C. (2020). GhostNet: More Features from Cheap Operations. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (pp. 1580-1589).
- Zhou, S., Zhang, J., Pan, J., et al. “Adapt or Perish: Adaptive Sparse Transformer with Attentive Feature Refinement for Image Restoration.” In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), 2024.













| Experimental environment | Item | Specific information |
|---|---|---|
| ]3*Hardware environment | GPU | NVIDIA GeForce RTX 3090 |
| CPU | Intel(R) Core(TM) i9-13900K | |
| video memory | 24GB | |
| memory | 16GB | |
| ]3*Software environment | Python | 3.8.10 |
| PyTorch | 1.11.0 + cu113 | |
| CUDA | 11.3 |
| Algorithm | P% | R% | mAP50% | mAP50-95% | Layers | Parameters | GFLOPs |
|---|---|---|---|---|---|---|---|
| YOLOv8n | 88.2 | 80.6 | 88.5 | 62.1 | 72 | 3,006,818 | 8.1 |
| YOLOv8n+DS_ | 90.3 | 85.4 | 92.4 | 68.7 | 73 | 3,006,578 | 8.0 |
| YOLOv8n+FRFN | 92.2 | 86.7 | 94.1 | 70.6 | 78 | 3,006,138 | 8.1 |
| YOLOv8n+DS_+FRFN | 95.4 | 89.7 | 95.7 | 76.1 | 79 | 3,005,898 | 8.0 |
| YOLOv8n+SPPF_WD | 91.6 | 87.8 | 93.2 | 69.0 | 77 | 3,007,074 | 8.1 |
| YOLOv8n-DSRS | 95.6 | 92.8 | 96.3 | 77.3 | 84 | 3,006,154 | 8.0 |
| Algorithm | P% | R% | mAP50% | mAP50-95% | Layers | Params | GFLOPs |
|---|---|---|---|---|---|---|---|
| YOLOv5 | 83.7 | 81.8 | 87.0 | 57.7 | 157 | 1.8M | 4.2 |
| YOLOv6 | 69.7 | 60.1 | 64.0 | 40.6 | 142 | 4.2M | 11.8 |
| YOLOv8-powerneck | 83.6 | 76.5 | 84.6 | 58.9 | 209 | 3.4M | 9.3 |
| YOLOv8-C2f_Atten_iRMB | 93.2 | 88.2 | 94.6 | 72.3 | 187 | 3.5M | 8.4 |
| YOLOv8-P6 | 91.0 | 83.8 | 92.3 | 66.4 | 220 | 4.8M | 8.1 |
| YOLOv8-ghost-P6 | 87.8 | 82.2 | 90.1 | 64.1 | 409 | 2.7M | 5.0 |
| YOLOv8-word | 91.1 | 86.9 | 92.3 | 68.8 | 195 | 3.5M | 10.0 |
| YOLOv9 | 91.3 | 87.1 | 92.4 | 69.8 | 604 | 50.7M | 236.7 |
| YOLOv8n-DSRS | 95.6 | 92.8 | 96.3 | 77.3 | 84 | 3.0M | 8.0 |
![]() |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2025 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
