Zou Ran, Liu Jun, Pan Haiyan, Tang Delong, Zhou Ruyan
School of Information Science, Shanghai Ocean University, Shanghai 201306, China.
National Earthquake Response Support Service, Beijing 100049, China.
Sensors (Basel). 2024 Jul 5;24(13):4371. doi: 10.3390/s24134371.
Quickly and accurately assessing the damage level of buildings is a challenging task for post-disaster emergency response. Most of the existing research mainly adopts semantic segmentation and object detection methods, which have yielded good results. However, for high-resolution Unmanned Aerial Vehicle (UAV) imagery, these methods may result in the problem of various damage categories within a building and fail to accurately extract building edges, thus hindering post-disaster rescue and fine-grained assessment. To address this issue, we proposed an improved instance segmentation model that enhances classification accuracy by incorporating a Mixed Local Channel Attention (MLCA) mechanism in the backbone and improving small object segmentation accuracy by refining the Neck part. The method was tested on the Yangbi earthquake UVA images. The experimental results indicated that the modified model outperformed the original model by 1.07% and 1.11% in the two mean Average Precision (mAP) evaluation metrics, mAPbbox50 and mAPseg50, respectively. Importantly, the classification accuracy of the intact category was improved by 2.73% and 2.73%, respectively, while the collapse category saw an improvement of 2.58% and 2.14%. In addition, the proposed method was also compared with state-of-the-art instance segmentation models, e.g., Mask-R-CNN and YOLO V9-Seg. The results demonstrated that the proposed model exhibits advantages in both accuracy and efficiency. Specifically, the efficiency of the proposed model is three times faster than other models with similar accuracy. The proposed method can provide a valuable solution for fine-grained building damage evaluation.
快速准确地评估建筑物的受损程度是灾后应急响应中的一项具有挑战性的任务。现有的大多数研究主要采用语义分割和目标检测方法,这些方法取得了良好的效果。然而,对于高分辨率无人机(UAV)图像,这些方法可能会导致建筑物内各种损坏类别问题,并无法准确提取建筑物边缘,从而阻碍灾后救援和细粒度评估。为了解决这个问题,我们提出了一种改进的实例分割模型,该模型通过在主干中纳入混合局部通道注意力(MLCA)机制来提高分类精度,并通过优化颈部部分来提高小目标分割精度。该方法在漾濞地震无人机图像上进行了测试。实验结果表明,改进后的模型在两个平均精度均值(mAP)评估指标mAPbbox50和mAPseg50中分别比原始模型高出1.07%和1.11%。重要的是,完好类别的分类精度分别提高了2.73%和2.73%,而倒塌类别的分类精度提高了2.58%和2.14%。此外,所提出的方法还与先进的实例分割模型(如Mask-R-CNN和YOLO V9-Seg)进行了比较。结果表明,所提出的模型在准确性和效率方面均表现出优势。具体而言,所提出模型的效率比其他具有相似精度的模型快三倍。所提出的方法可为细粒度建筑物损坏评估提供有价值的解决方案。