论文标题
SAR时间系列中无监督的洪水检测
Unsupervised Flood Detection on SAR Time Series
论文作者
论文摘要
人类文明对地球体系具有越来越强大的影响。受气候变化和土地利用变化的影响,诸如洪水等自然灾害近年来一直在增加。地球观测是评估和减轻负面影响的宝贵来源。从地球观察数据中检测变化是监测可能影响的一种方法。有效而可靠的变更检测(CD)方法可以帮助识别早期灾难事件的风险。在这项工作中,我们提出了一种新型的无监督CD方法,可以在时间序列合成孔径雷达〜(SAR)数据中。我们提出的方法是一种概率模型,该模型采用无监督的学习技术,重建和对比度学习训练。更改图是在事前和事后数据之间的分布差的帮助下生成的。我们提出的CD模型对洪水检测数据进行了评估。我们验证了模型对8个不同洪水地点的功效,包括哥白尼紧急管理服务的三起洪水事件和SEN1FLOODS11数据集的6个。我们提出的模型平均达到64.53 \%的交叉点(IOU)值和75.43 \%F1得分。我们所达到的IOU得分约为6-27%,而F1得分比比较的无监督和监督现有CD方法好约7-22 \%。研究中提出的结果和广泛的讨论表明了提出的无监督CD方法的有效性。
Human civilization has an increasingly powerful influence on the earth system. Affected by climate change and land-use change, natural disasters such as flooding have been increasing in recent years. Earth observations are an invaluable source for assessing and mitigating negative impacts. Detecting changes from Earth observation data is one way to monitor the possible impact. Effective and reliable Change Detection (CD) methods can help in identifying the risk of disaster events at an early stage. In this work, we propose a novel unsupervised CD method on time series Synthetic Aperture Radar~(SAR) data. Our proposed method is a probabilistic model trained with unsupervised learning techniques, reconstruction, and contrastive learning. The change map is generated with the help of the distribution difference between pre-incident and post-incident data. Our proposed CD model is evaluated on flood detection data. We verified the efficacy of our model on 8 different flood sites, including three recent flood events from Copernicus Emergency Management Services and six from the Sen1Floods11 dataset. Our proposed model achieved an average of 64.53\% Intersection Over Union(IoU) value and 75.43\% F1 score. Our achieved IoU score is approximately 6-27\% and F1 score is approximately 7-22\% better than the compared unsupervised and supervised existing CD methods. The results and extensive discussion presented in the study show the effectiveness of the proposed unsupervised CD method.