Despite recent advances in deep-learning based semantic segmentation, automatic building detection from remotely sensed imagery is still a challenging problem owing to large variability in the appearance of buildings across the globe. The errors occur mostly around the boundaries of the building footprints, in shadow areas, and when detecting buildings whose exterior surfaces have reflectivity properties that are very similar to those of the surrounding regions. To overcome these problems, we propose a generative adversarial network based segmentation framework with uncertainty attention unit and refinement module embedded in the generator. The refinement module, composed of edge and reverse attention units, is designed to refine the predicted building map. The edge attention enhances the boundary features to estimate building boundaries with greater precision, and the reverse attention allows the network to explore the features missing in the previously estimated regions. The uncertainty attention unit assists the network in resolving uncertainties in classification. As a measure of the power of our approach, as of December 4, 2021, it ranks at the second place on DeepGlobe's public leaderboard despite the fact that main focus of our approach -- refinement of the building edges -- does not align exactly with the metrics used for leaderboard rankings. Our overall F1-score on DeepGlobe's challenging dataset is 0.745. We also report improvements on the previous-best results for the challenging INRIA Validation Dataset for which our network achieves an overall IoU of 81.28% and an overall accuracy of 97.03%. Along the same lines, for the official INRIA Test Dataset, our network scores 77.86% and 96.41% in overall IoU and accuracy.
翻译:尽管最近在深层学习基于语义部分方面取得了进展,但从遥感图像中自动检测到的988层结构仍是一个具有挑战性的问题,因为全球建筑物的外观变化很大。错误主要发生在建筑足迹的边界线上,在阴影区,在探测外部表面反映特征的建筑物时,这些建筑物的外表反映特征与周围区域的特征非常相似。为了克服这些问题,我们提议采用一个基于基因化对抗性网络分割框架,其中含有不确定的注意单元和嵌入发电机的精细模块。改进模块由边缘和反向关注单位组成,目的是改进预测的建筑图。高度关注提高了边界特征,以便更精确地估计建筑边界线,而逆向关注则使得网络能够探索以前估计的区域缺失的特征。不确定关注单位协助网络解决分类方面的不确定性。作为衡量我们截至2021年12月4日的做法的第二大功率,在DeepGlobe的公共领导板上,尽管我们的方法的主要重点 -- 改进建筑边缘 -- -- 并不完全符合用于将数据精确性地标标标的准确度估算出建筑边界界限的边界线,并且使得网络在前一个具有挑战性的标准网络上,我们的数据总的精确度报告也具有挑战性。