Objective:Computer vision-based up-to-date accurate damage classification and localization are of decisive importance for infrastructure monitoring, safety, and the serviceability of civil infrastructure. Current state-of-the-art deep learning (DL)-based damage detection models, however, often lack superior feature extraction capability in complex and noisy environments, limiting the development of accurate and reliable object distinction. Method: To this end, we present DenseSPH-YOLOv5, a real-time DL-based high-performance damage detection model where DenseNet blocks have been integrated with the backbone to improve in preserving and reusing critical feature information. Additionally, convolutional block attention modules (CBAM) have been implemented to improve attention performance mechanisms for strong and discriminating deep spatial feature extraction that results in superior detection under various challenging environments. Moreover, additional feature fusion layers and a Swin-Transformer Prediction Head (SPH) have been added leveraging advanced self-attention mechanism for more efficient detection of multiscale object sizes and simultaneously reducing the computational complexity. Results: Evaluating the model performance in large-scale Road Damage Dataset (RDD-2018), at a detection rate of 62.4 FPS, DenseSPH-YOLOv5 obtains a mean average precision (mAP) value of 85.25 %, F1-score of 81.18 %, and precision (P) value of 89.51 % outperforming current state-of-the-art models. Significance: The present research provides an effective and efficient damage localization model addressing the shortcoming of existing DL-based damage detection models by providing highly accurate localized bounding box prediction. Current work constitutes a step towards an accurate and robust automated damage detection system in real-time in-field applications.
翻译:目标:基于综合愿景的最新准确损坏分类和本地化对于基础设施监测、安全和民用基础设施的可使用性具有决定性重要性。目前,基于高级深层学习(DL)的损坏探测模型往往缺乏在复杂和吵闹环境中的高级特征提取能力,限制了准确和可靠的物体区分的形成。方法:为此,我们提出了基于DenseSPH-YOLOv5的基于实时DL的高性能损坏探测模型,DenseNet的区块已经与主干部分相结合,以改善关键特性信息的保存和再利用。此外,实施了最新的最先进的基于深层学习(DL)的损坏探测模型(CBAM),以改进在各种挑战环境中强有力和有区别的深度空间特征探测模型的注意性能机制。此外,额外的特性聚变层和双向透明预测台(SHPH)的高级自控机制,以便更高效地探测多级物体尺寸,同时降低计算复杂性。结果:大规模公路损坏数据系统模型的模型性能(RDD.25-20OL)的准确性精确度应用模块,在高VS的准确度测试中提供目前为85-VS的准确度数据(DPHS) 的当前VS的准确度测值,以58号测算的目前测算的精确度,以平均的精确度的测算值为65的精确度,以58号的精确度为标准。</s>