Building rooftop data are of importance in several urban applications and in natural disaster management. In contrast to traditional surveying and mapping, by using high spatial resolution aerial images, deep learning-based building rooftops extraction methods are efficient and accurate. Although more training data is preferred in deep learning-based tasks, the effect of data volume on building extraction models is underexplored. Therefore, the paper explores the impact of data volume on the performance of building rooftop extraction from very-high-spatial-resolution (VHSR) images using deep learning-based methods. To do so, we manually labelled 0.12m spatial resolution aerial images and perform a comparative analysis of models trained on datasets of different sizes using popular deep learning architectures for segmentation tasks, including Fully Convolutional Networks (FCN)-8s, U-Net and DeepLabv3+. The experiments showed that with more training data, algorithms converged faster and achieved higher accuracy, while better algorithms were able to better mitigate the lack of training data.
翻译:建筑屋顶数据在若干城市应用和自然灾害管理中具有重要性。与传统的勘测和绘图不同,使用高空间分辨率空中图像,深学习建筑屋顶提取方法既有效又准确。虽然深学习任务偏好更多的培训数据,但数据量对建筑抽取模型的影响没有得到充分探讨。因此,文件探讨了数据量对利用深学习方法从甚高空间分辨率图像中建造屋顶提取工作的影响。为此,我们手工标出0.12米空间分辨率空中图像,对利用广受欢迎的深学习结构进行不同尺寸数据集的模型进行比较分析,用于分化任务,包括全演网络-8、U-Net和DeepLabv3+。实验显示,随着更多的培训数据,算法会更快地趋近,并实现了更高的精确度。更好的算法能够更好地减少培训数据的缺乏。