In the field of post-disaster assessment, for timely and accurate rescue and localization after a disaster, people need to know the location of damaged buildings. In deep learning, some scholars have proposed methods to make automatic and highly accurate building damage assessments by remote sensing images, which are proved to be more efficient than assessment by domain experts. However, due to the lack of a large amount of labeled data, these kinds of tasks can suffer from being able to do an accurate assessment, as the efficiency of deep learning models relies highly on labeled data. Although existing semi-supervised and unsupervised studies have made breakthroughs in this area, none of them has completely solved this problem. Therefore, we propose adopting a self-supervised comparative learning approach to address the task without the requirement of labeled data. We constructed a novel asymmetric twin network architecture and tested its performance on the xBD dataset. Experiment results of our model show the improvement compared to baseline and commonly used methods. We also demonstrated the potential of self-supervised methods for building damage recognition awareness.
翻译:在灾后评估领域,为了在灾害发生后及时、准确的救援和定位,人们需要了解受损建筑物的位置。在深层次的学习中,一些学者提出了通过遥感图像进行自动和高度准确的建筑损坏评估的方法,事实证明,这些评估比域专家的评估更有效率。然而,由于缺乏大量贴标签的数据,这些任务可能无法进行准确的评估,因为深层学习模型的效率高度依赖有标签的数据。虽然现有的半监督和未经监督的研究在这方面取得了突破,但其中没有一个完全解决了这个问题。因此,我们提议采用自上而下的比较学习方法,在不需要贴标签数据的情况下处理这项任务。我们建立了一个新的不对称双网络结构,并在xBD数据集上测试了它的性能。我们模型的实验结果显示与基线和常用方法相比的改进。我们还展示了建立对损害认识的自我监督方法的潜力。