Remote Sensing Change Detection (RS-CD) aims to detect relevant changes from Multi-Temporal Remote Sensing Images (MT-RSIs), which aids in various RS applications such as land cover, land use, human development analysis, and disaster response. The performance of existing RS-CD methods is attributed to training on large annotated datasets. Furthermore, most of these models are less transferable in the sense that the trained model often performs very poorly when there is a domain gap between training and test datasets. This paper proposes an unsupervised CD method based on deep metric learning that can deal with both of these issues. Given an MT-RSI, the proposed method generates corresponding change probability map by iteratively optimizing an unsupervised CD loss without training it on a large dataset. Our unsupervised CD method consists of two interconnected deep networks, namely Deep-Change Probability Generator (D-CPG) and Deep-Feature Extractor (D-FE). The D-CPG is designed to predict change and no change probability maps for a given MT-RSI, while D-FE is used to extract deep features of MT-RSI that will be further used in the proposed unsupervised CD loss. We use transfer learning capability to initialize the parameters of D-FE. We iteratively optimize the parameters of D-CPG and D-FE for a given MT-RSI by minimizing the proposed unsupervised ``similarity-dissimilarity loss''. This loss is motivated by the principle of metric learning where we simultaneously maximize the distance between change pair-wise pixels while minimizing the distance between no-change pair-wise pixels in bi-temporal image domain and their deep feature domain. The experiments conducted on three CD datasets show that our unsupervised CD method achieves significant improvements over the state-of-the-art supervised and unsupervised CD methods. Code available at https://github.com/wgcban/Metric-CD
翻译:远程遥感变化探测(RS-CD)旨在探测多时间遥感图像(MT-RSI)的相关变化,这些图像有助于各种RS的应用程序,如土地覆盖、土地利用、人类发展分析和救灾。现有的RS-CD方法的性能归功于大型附加说明数据集的培训。此外,大多数这些模型的可转让性较低,因为当培训和测试数据集之间存在域差时,经过培训的模型往往表现非常差。本文件提出一种未经监督的CD方法,其基础是能够同时处理这两个问题的深度指标学习。考虑到MT-RSI,拟议的方法产生相应的变化概率图,方法是在大型数据集上不进行培训的情况下,迭接地优化一个不受监督的CD-CD损失。我们未经监督的CD-CD方法包括两个相互关联的深度网络,即深长的可变性发电机(D-CPG)和深精度提取器(D-FE)。D-CPG 设计的D-CPG 用于预测变化,在给MT-RSI的更深度参数上没有改变,而D-D-FE的深度参数则用于提取深度数据流流变换。我们使用的CD-M-M-MMD-modeal-mod-modeal-mod-mode drede drodeal drodeal drode disldal 用于D-modealdal disl drealdaldal drodaldaldal</s>