School of Transportation Science and Engineering, Beihang University, Beijing 100191, China.
National Astronomical Observatories of Chinese Academy of Sciences (NAOC), University of Chinese Academy of Science, Beijing 100012, China.
Sensors (Basel). 2018 Nov 14;18(11):3921. doi: 10.3390/s18113921.
Buildings along riverbanks are likely to be affected by rising water levels, therefore the acquisition of accurate building information has great importance not only for riverbank environmental protection but also for dealing with emergency cases like flooding. UAV-based photographs are flexible and cloud-free compared to satellite images and can provide very high-resolution images up to centimeter level, while there exist great challenges in quickly and accurately detecting and extracting building from UAV images because there are usually too many details and distortions on UAV images. In this paper, a deep learning (DL)-based approach is proposed for more accurately extracting building information, in which the network architecture, SegNet, is used in the semantic segmentation after the network training on a completely labeled UAV image dataset covering multi-dimension urban settlement appearances along a riverbank area in Chongqing. The experiment results show that an excellent performance has been obtained in the detection of buildings from untrained locations with an average overall accuracy more than 90%. To verify the generality and advantage of the proposed method, the procedure is further evaluated by training and testing with another two open standard datasets which have a variety of building patterns and styles, and the final overall accuracies of building extraction are more than 93% and 95%, respectively.
沿江建筑物很可能会受到水位上升的影响,因此,不仅对于河岸环境保护,而且对于处理洪水等紧急情况而言,准确获取建筑物信息都具有重要意义。与卫星图像相比,基于无人机的照片更加灵活且无云,可以提供高达厘米级别的非常高分辨率的图像,但是由于无人机图像上通常存在过多的细节和失真,因此快速而准确地检测和提取建筑物存在很大的挑战。在本文中,提出了一种基于深度学习(DL)的方法,用于更准确地提取建筑物信息,其中网络架构SegNet 在经过对涵盖重庆沿江地区多维度城市住区外观的完全标记的无人机图像数据集的网络训练之后,用于语义分割。实验结果表明,在从未经训练的位置检测建筑物方面,该方法的性能非常出色,平均整体准确率超过 90%。为了验证所提出方法的通用性和优势,还使用另外两个具有各种建筑物样式和风格的公开标准数据集进行了训练和测试,建筑物提取的最终整体准确率分别超过 93%和 95%。