Building footprints data is of importance in several urban applications and natural disaster management. In contrast to traditional surveying and mapping, using high spatial resolution aerial images, deep learning-based building footprints extraction methods can extract building footprints accurately and efficiently. With rapidly development of deep learning methods, it is hard for novice to harness the powerful tools in building footprints extraction. The paper aims at providing the whole process of building footprints extraction from high spatial resolution images using deep learning-based methods. In addition, we also compare the commonly used methods, including Fully Convolutional Networks (FCN)-8s, U-Net and DeepLabv3+. At the end of the work, we change the data size used in models training to explore the influence of data size to the performance of the algorithms. The experiments show that, in different data size, DeepLabv3+ is the best algorithm among them with the highest accuracy and moderate efficiency; FCN-8s has the worst accuracy and highest efficiency; U-Net shows the moderate accuracy and lowest efficiency. In addition, with more training data, algorithms converged faster with higher accuracy in extraction results.
翻译:建筑足迹数据在若干城市应用和自然灾害管理中非常重要。与传统的勘测和绘图方法相比,使用高空间分辨率空中图像,深学习的建筑足迹提取方法能够准确和高效地提取建筑足迹。随着深层学习方法的迅速发展,新人很难利用强大的工具来提取足迹。论文的目的是提供利用深层学习方法从高空间分辨率图像中提取足迹的整个过程。此外,我们还比较了常用的方法,包括全面革命网络-8、U-Net和DeepLabv3+。在工作结束时,我们改变了模型培训中所使用的数据规模,以探索数据大小对算法的性能的影响。实验表明,在不同的数据规模中,DeepLabv3+是它们之间最精确和最中效率的最佳算法;FCN-8的准确性和效率最差;U-Net显示中度的准确性和最低效率。此外,在更多的培训数据中,算法与提炼结果的精确性都比较得更快。