FCN attention enhancing asphalt pavement crack detection through attention mechanisms and fully convolutional networks
H. Zhang, Jiawei Liu, Guoping Hu
Abstract
This paper presents an innovative approach to detecting cracks in asphalt pavement using an FCN-attention model, which integrates attention mechanisms into a fully convolutional network (FCN) for enhanced pixel-level segmentation. The model employs a ResNet-50-based encoder and incorporates channel-wise and spatial attention modules to refine feature extraction and focus on the most relevant image regions. The results demonstrate that the FCN-attention model outperforms traditional models such as VGG-16, AlexNet, MobileNet, and GoogleNet across multiple evaluation metrics. Specifically, the FCN-attention model achieves a global accuracy rate of 90.79%, with a precision of 92.3%, recall of 89.5%, and an F1-score of 90.9%. Additionally, the model achieves an average intersection-over-union (IoU) ratio of 69.7% and a test duration of 109.1 ms per image. The proposed method also excels in crack length and width calculation, providing real-world dimensions for the detected cracks. The model's effectiveness is further validated through an ablation study, which highlights the significant impact of the attention mechanism on model performance.